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Transcript
Authoritative Review
Dietary and Policy Priorities for Cardiovascular Disease,
Diabetes, and Obesity
A Comprehensive Review
Dariush Mozaffarian, MD, DrPH
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Abstract—Suboptimal nutrition is a leading cause of poor health. Nutrition and policy science have advanced rapidly,
creating confusion yet also providing powerful opportunities to reduce the adverse health and economic impacts of poor
diets. This review considers the history, new evidence, controversies, and corresponding lessons for modern dietary
and policy priorities for cardiovascular diseases, obesity, and diabetes mellitus. Major identified themes include the
importance of evaluating the full diversity of diet-related risk pathways, not only blood lipids or obesity; focusing on
foods and overall diet patterns, rather than single isolated nutrients; recognizing the complex influences of different foods
on long-term weight regulation, rather than simply counting calories; and characterizing and implementing evidencebased strategies, including policy approaches, for lifestyle change. Evidence-informed dietary priorities include increased
fruits, nonstarchy vegetables, nuts, legumes, fish, vegetable oils, yogurt, and minimally processed whole grains; and
fewer red meats, processed (eg, sodium-preserved) meats, and foods rich in refined grains, starch, added sugars, salt, and
trans fat. More investigation is needed on the cardiometabolic effects of phenolics, dairy fat, probiotics, fermentation,
coffee, tea, cocoa, eggs, specific vegetable and tropical oils, vitamin D, individual fatty acids, and diet-microbiome
interactions. Little evidence to date supports the cardiometabolic relevance of other popular priorities: eg, local, organic,
grass-fed, farmed/wild, or non–genetically modified. Evidence-based personalized nutrition appears to depend more
on nongenetic characteristics (eg, physical activity, abdominal adiposity, gender, socioeconomic status, culture) than
genetic factors. Food choices must be strongly supported by clinical behavior change efforts, health systems reforms,
novel technologies, and robust policy strategies targeting economic incentives, schools and workplaces, neighborhood
environments, and the food system. Scientific advances provide crucial new insights on optimal targets and best practices
to reduce the burdens of diet-related cardiometabolic diseases. (Circulation. 2016;133:187-225. DOI: 10.1161/
CIRCULATIONAHA.115.018585.)
Key Words: cardiovascular diseases ◼ delivery of health care ◼ diet ◼ diabetes mellitus ◼ nutrition
◼ obesity ◼ policy ◼ prevention and control ◼ review
S
science has advanced remarkably. In comparison with historical
dietary recommendations which were based largely on crossnational studies, short-term experiments, and animal models,
nutrition science has been transformed in the past 2 decades by
more rigorous evidence from well-designed metabolic studies,
prospective cohorts, and randomized clinical trials.
Several key lessons have emerged (Table 1). First, it is
now evident that dietary habits influence diverse cardiometabolic risk factors, including not only obesity and low-density
lipoprotein (LDL) cholesterol, but also blood pressure (BP),
glucose-insulin homeostasis, lipoprotein concentrations and
function, oxidative stress, inflammation, endothelial health,
hepatic function, adipocyte metabolism, cardiac function,
metabolic expenditure, pathways of weight regulation, visceral
adiposity, and the microbiome (Figure 1). Whereas decades
of dietary recommendations focused on dietary fat and blood
uboptimal diet is the leading risk factor for death and disability in the United States and worldwide.1,2 Among disadvantaged populations in all nations, hunger and malnutrition cause
enormous suffering. Simultaneously, diet-related cardiometabolic diseases such as coronary heart disease (CHD), stroke,
type 2 diabetes mellitus, and obesity produce even larger global
health burdens. Other vascular conditions including peripheral
arterial disease, chronic kidney disease, cognitive decline, heart
failure, and atrial fibrillation are also influenced by diet-related
risk factors. Worldwide, chronic diseases will cause $17.3 trillion of cumulative economic loss between 2011 and 2030 from
healthcare expenditures, reduced productivity, and lost capital.3
Considering these health and economic burdens, diet-related illnesses are among the leading priorities of our time.
In recent years, global dietary patterns have shifted in
nearly every nation in the world.4 At the same time, nutrition
From Friedman School of Nutrition Science & Policy, Tufts University, Boston, MA.
Correspondence to Dariush Mozaffarian, MD, DrPH, Dean’s Office, 150 Harrison Ave, Boston, MA 02111. E-mail [email protected]
© 2016 The Authors. Circulation is published on behalf of the American Heart Association, Inc., by Wolters Kluwer. This is an open access article under
the terms of the Creative Commons Attribution Non-Commercial-NoDervis License, which permits use, distribution, and reproduction in any medium,
provided that the original work is properly cited, the use is noncommercial, and no modifications or adaptations are made.
Circulation is available at http://circ.ahajournals.org
DOI: 10.1161/CIRCULATIONAHA.115.018585
187
188 Circulation January 12, 2016
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cholesterol and current dietary discussions are often preoccupied with total calories and obesity, the full health impact of
diet extends far beyond these pathways. Cardiometabolic consequences of any nutrient, food, or overall diet should not be
extrapolated from any single surrogate outcome,5 but assessed
based on the totality of evidence including interventional trials
evaluating multiple risk pathways, prospective cohort studies
of clinical events, and, where available, randomized trials of
clinical events.6,7
A second key lesson is the importance of specific foods
and overall diet patterns, rather than single isolated nutrients,
for cardiometabolic risk.8,9 Indeed, focusing on isolated nutrients often leads to paradoxical dietary choices and industry
formulations. A food-based approach also better facilitates
public guidance and minimizes industry manipulation.
Third, the science of obesity has progressed dramatically.
Similar to lessons for CHD risk, the primary prevention of
obesity – avoidance of long-term weight gain – may prove
more effective and enduring than secondary prevention –
obesity treatment after it has occurred. The diverse, complex
physiological mechanisms of long-term weight homeostasis
are also being elucidated. These lines of evidence indicate
that an energy-imbalance concept of obesity is oversimplified.
Whereas short-term weight loss can be achieved by any type
of calorie-reduced diet, in the long term, counting calories
may not be biologically nor behaviorally relevant. Rather, the
quality and types of foods consumed influence diverse pathways related to weight homeostasis, such as satiety, hunger,
brain reward, glucose-insulin responses, hepatic de novo lipogenesis, adipocyte function, metabolic expenditure, and the
microbiome. Thus, all calories are not equal for long-term adiposity: certain foods impair pathways of weight homeostasis,
others have relatively neutral effects, and others promote the
integrity of weight regulation.
Finally, major strides have been made in the science of
individual, sociocultural, and environmental determinants of
dietary choices. Influences are complex, including individuallevel, sociocultural, community, agricultural, industry, governmental, and global contributors.10 Several individual, health
system, and policy-level strategies now have strong evidence
for efficacy.11 Elucidation of methods for better translation of
these approaches is needed.
This article summarizes the modern evidence for health
effects of diet on cardiometabolic diseases, including key
evidence-based priorities, relevant mechanisms, and major
unanswered questions, and the evidence on barriers and
opportunities for behavior change in the clinic, health system, and population, including novel policy and technology
strategies.
Nutrients, Foods, and Diet Patterns
– a Historical Evolution
In 1747, Captain James Lind performed one of the earliest
recorded clinical trials. Based on earlier observations, he
assigned British sailors who had scurvy to several different
treatments.9,12 Only 1 group – those receiving citrus fruits –
improved, providing new evidence that a specific dietary factor could cure disease. By the turn of the century, the British
fleet routinely added lemon or lime juice to rations, a practice
making them famous as “limeys”.
Yet, it was not until 1932 that the first vitamin was
­isolated – vitamin C – and was verified as the active protective constituent against scurvy. This confirmed, for the
first time, that specific dietary nutrients could prevent disease. Over the next 2 decades, an explosion of nutrition
science confirmed other single-nutrient diseases such as
beriberi (thiamine), pellagra (niacin), anemia (iron), goiter
(iodine), night blindness (vitamin A), and rickets (vitamin
D). Coincident to these scientific advances, geopolitical
events – the Great Depression, World War II – greatly magnified attention on food shortages and nutrient inadequacy.
Indeed, the first Recommended Dietary Allowances originated in 1941 by order of President Franklin Roosevelt,
when he convened the National Nutrition Conference on
Defense to ensure a population fit for war by minimizing nutrient deficiency diseases.13,14 That same year, the
American Medical Association declared that, “research
in nutrition be encouraged” with primary aims of
Table 1. Key New Lessons from Modern Nutritional Science
Diverse physiological effects of diet
Dietary habits influence a myriad of cardiometabolic risk factors, including blood pressure, glucose-insulin
homeostasis, lipoprotein concentrations and function, inflammation, endothelial health, hepatic function, adipocyte
metabolism, cardiac function, metabolic expenditure, and pathways of weight regulation, visceral adiposity, and the
microbiome. Focus on single surrogate outcomes can be misleading. Based on these diverse effects, diet quality is
more relevant than quantity, and the primary emphasis should be cardiovascular and metabolic health, not simply
body weight or obesity.
Importance of foods and diet patterns
Specific foods and overall diet patterns, rather than single isolated nutrients, are most relevant for cardiometabolic
health. The historical focus on isolated nutrients contributes to confusion about what constitutes a healthy diet,
distracts from more effective strategies, and drives industry, policy makers, and the public toward diets which meet
selected nutrient cut points but provide little health benefit.
Complexity of obesity and weight regulation
Diet quality influences diverse pathways related to weight homeostasis, including satiety, hunger, brain reward,
glucose-insulin responses, hepatic de novo lipogenesis, adipocyte function, metabolic expenditure, and the
microbiome. For long-term weight control, all calories are not created equal because of the divergent long-term
effects of different foods on these pathways of weight homeostasis.
Individual, health systems, and policy
approaches for behavior change
Multiple evidence-based strategies for improving dietary behaviors have now been identified, including at the
individual (patient) level, in health systems, and in populations. Integrated, multicomponent approaches that
include upstream policy measures, midstream educational efforts, and downstream community and environmental
approaches may be especially effective.
Mozaffarian Dietary and Policy Priorities 189
Refined grains, starches, sugars
Fruits, vegetables, nuts
Whole grains, legumes
Yogurt, cheese, milk
Fish, shellfish
Processed meats, red meats
Vegetable oils, specific fatty acids
Coffee, tea, alcohol
Sugary beverages, juice
Minerals, antioxidants, phytochemicals
Food-based dietary patterns
Food processing, preparation methods
Blood pressure
sis
Glucose-insulin homeostasis
Liver fat synthesis
ns
Blood lipids, apolipoproteins
Endothelial function
Systemic inflammation
Brain reward, craving
Gut microbiome
Satiety, hunger, obesity
Adipocyte function
Cardiac function
Thrombosis, coagluation
Vasular adhesion
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“estimating the amounts of essential nutrients in foods,”
“detection of nutritional deficiency states,” and more precise
determination of “optimum and minimum requirements” for
each nutrient.15 Consequently, all of the first Recommended
Dietary Allowances focused on nutrient deficiency, including for calories, protein, iron, calcium, thiamin, riboflavin,
niacin, and vitamins A, C, and D. Based on this chance convergence of scientific and geopolitical events, US dietary
guidelines over most of the 20th century emphasized prevention of single-nutrient deficiencies.14
With the modernization of agriculture, food processing,
and food formulations, nutrient deficiencies rapidly receded
in the United States and other high-income nations. In their
place, a growing epidemic of chronic diseases was recognized.
Beginning in 1980, for the first time, US dietary guidelines
began to focus on chronic disease.14 The main available evidence derived from less robust study designs: eg, crude crossnational comparisons, short-term experiments of surrogate
outcomes in healthy volunteers. Furthermore, after decades of
emphasis on deficiency diseases, the single-nutrient paradigm
continued to dominate research approaches and interpretations. Together, these factors caused oversimplified inferences
on how diet influences cardiovascular disease (CVD), diabetes mellitus, and obesity. Scientists and policy makers intuitively followed earlier methods that had been so successful
in reducing deficiencies: identify the relevant nutrient, establish its target intake, and translate this to recommendations.
To many, saturated fat and cholesterol became the causes of
CHD, and total fat became the cause of obesity. Thus, the
1980 Dietary Guidelines remained heavily nutrient-focused:
“avoid too much fat, saturated fat, and cholesterol; eat foods
with adequate starch and fiber; avoid too much sugar; avoid
too much sodium.”
Modern evidence now demonstrates the limitations
of this single-nutrient component focus. The framework
of Recommended Dietary Allowances was quickly recognized as methodologically and conceptually inappropriate for chronic diseases, leading to the creation of new
nutrient-based metrics (eg, Adequate Intakes; Acceptable
Macronutrient Distribution Ranges) which were themselves
limited by imprecise definitions and inconsistent usage.16
Furthermore, although scientific investigation of macroand micronutrients remains essential to elucidate biological
mechanisms, the complex matrix of foods, food processing,
Figure 1. Diet and cardiovascular and metabolic risk – pathways and mechanisms. Each
of these dietary factors influences many or even all of these
pathways, which could also
be modified in some cases by
underlying individual characteristics. Selected major effects are
detailed in the text sections on
each dietary factor.
and food preparation strongly modifies the final health
effects.8,9,17,18 Translation of nutrient-based targets to the
public also proved difficult: few people understand or can
accurately estimate without guidance their daily consumption of nutrients such as calories, fats, cholesterol, fiber,
salt, or single vitamins. Most importantly, methodologic
advances in nutrition science now demonstrate that nutrientfocused metrics are inadequate to explain most effects of
diet on chronic diseases. Rather, cardiometabolic diseases
are largely influenced not by single nutrients, but by specific
foods and overall diet patterns.19–21
These historical events elucidate the current state of nutrition. Modern dietary science is surprisingly young – only 83
years have elapsed since the first vitamin was isolated – and
much of its existence was focused on single-nutrient diseases.
The major impact of diet on chronic diseases was not widely
appreciated until even more recently, 35 to 40 years ago. And,
not until the last 15 to 20 years has the scientific methodology
become sufficiently advanced to provide strong, consistent
inference on diet, chronic diseases, and relevant metabolic
pathways. Thus, the present period is one of exciting, rapid
transition away from single-nutrient theories and simple
surrogate outcomes and toward foods, dietary patterns, and
evaluation of clinical end points. This transition forms the
basis for our modern understanding of diet and cardiometabolic health.
Dietary Patterns
Dietary patterns represent the overall combination of foods
habitually consumed, which together produce synergistic
health effects. Evidence-informed beneficial diet patterns
share several key characteristics (Table 2).19,21–23 These include
more minimally processed foods such as fruits, nuts/seeds,
vegetables (excluding russet or white potatoes), legumes,
whole grains, seafood, yogurt, and vegetable oils; and fewer
red meats, processed (sodium-preserved) meats, and foods
rich in refined grains, starches, and added sugars. Such diets
are higher in fiber, vitamins, antioxidants, minerals, phenolics,
and unsaturated fats, and lower in glycemic index, glycemic
load, salt, and trans fat.
The scientific concordance, controversy, and related evidence for these and other key dietary targets are variable
(Table 3). As described above, this reflects the youthful nature
of the science of nutrition and chronic disease, together with
190 Circulation January 12, 2016
Table 2. Dietary Priorities for Cardiometabolic Health*
Goal*
Consume
more
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Consume
less
One Serving Equals...
Examples
Fruits
3 servings/d
1 medium-sized fruit; ½ cup of fresh, frozen, or
unsweetened canned fruit; ½ cup of dried fruit;
½ cup of 100% juice
Blueberries, strawberries, apple, orange, banana,
grapes, grapefruit, avocado, mango. Whole fruits are
preferable to 100% juice, which should be limited to no
more than 1 serving/d.
Nuts, seeds
4 servings/wk
1 ounce
Almonds, walnuts, peanuts, hazelnuts, cashews,
pecans, Brazil nuts, sunflower seeds, sesame seeds.
Vegetables, including 3 servings/d
legumes (excluding
russet or white
potatoes)
1 cup of raw leafy vegetables; ½ cup of cut-up
raw vegetables, cooked vegetables, or 100%
vegetable juice
Spinach, kale, and other green leafy plants; broccoli,
carrots, onions, peppers; peas, beans, lentils. Minimize
starchy vegetables, especially russet or white potatoes.
Whole grains†
3 servings/d, in
place of refined
grains
1 slice of whole-grain bread; 1 cup of high-fiber, Oats, bulgur, whole-wheat couscous, barley, wholewhole-grain cereal; ½ cup of cooked whole-grain grain breads and cereals, brown rice.
rice, pasta, or cereal
Fish, shellfish
≥2 servings/wk
3.5 ounces (100 g)
The best choices are oily fish such as salmon, tuna,
mackerel, trout, herring, and sardines.
Dairy products,
2–3 servings/d
especially yogurt and
cheese ‡
1 cup of milk or yogurt; 1 ounce of cheese
Whole-fat or low-fat yogurt, cheese, milk.
Vegetable oils
2–6 servings/d
1 teaspoon oil, 1 tablespoon vegetable spread
The best evidence supports phenolic- and unsaturated
fat–rich oils such as soybean, canola, and extra virgin
olive oil; also consider safflower oil, peanut oil, and soft
margarine spreads made with these oils.
Refined grains,
starches, added
sugars†
No more than 1–2
servings/d
1 slice of bread, ½ cup of rice or cereal, 1 sweet White bread, white rice, most breakfast cereals,
or dessert
crackers, granola bars, sweets, bakery desserts, added
sugars.
Processed meats
No more than 1
serving/wk
1.75 ounces (50 g)
Preserved (sodium, nitrates) meats such as bacon,
sausage, hot dogs, pepperoni, salami, low-fat deli
meats (eg, chicken, turkey, ham, beef).
Unprocessed red
meats
No more than 1–2
servings/wk
3.5 ounces (100 g)
Fresh/frozen beef, pork, lamb.
Industrial trans fat §
Don’t eat
Any food containing or made with partially
hydrogenated vegetable oil
Certain stick margarines, commercially prepared baked
foods (cookies, pies, donuts, etc0), snack foods, deepfried foods.
Sugar-sweetened
beverages
Don’t drink
8 ounces of beverage; 1 small sweet, pastry, or
dessert
Sugar-sweetened soda, fruit drinks, sports drinks,
energy drinks, iced teas.
Sodium
No more than 2000 n/a
mg/d
Sodium is commonly high in foods as a preservative or
to mask unpleasant flavors when previously cooked.
Common sources include bread, chicken (often injected
to increase succulence), cheese, processed meats,
soups, canned foods.
*Based on a 2000 kcal/d diet. Servings should be adjusted accordingly for higher or lower energy consumption.
†As a practical rule-of-thumb for selecting healthful whole grains and avoiding carbohydrate-rich products high in starches and added sugars, the ratio of total
carbohydrate to dietary fiber (g/serving of each) appears useful.168,169 Foods with ratios <10:1 are preferable; ie, food containing at least 1 g of fiber for every 10 g of total
carbohydrate. In addition, minimally processed whole grains (eg, steel-cut oats, stone-ground bread) are generally preferable to finely milled whole grains (eg, many
commercial whole-grain breads and breakfast cereals) because of the larger glycemic responses of the latter.
‡Current evidence does not permit clear differentiation of whether low-fat or whole-fat products are superior for cardiometabolic health. Other characteristics, such
as probiotic content or fermentation, may be far more relevant than fat content.
§The US Food and Drug Administration recently ruled that the use of partially hydrogenated vegetable oils is no longer “generally regarded as safe,”384 which should
effectively eliminate the majority of industrial trans fats from the US food supply. Several countries including Denmark, Argentina, Austria, Iceland, and Switzerland
have effectively eliminated the use of partially hydrogenated vegetable oils through direct legislation on the amounts of allowable trans fats in foods. Small amounts of
certain trans fatty acids may be formed through other industrial processes, including oil deodorization and high-temperature cooking; the health effects of these trace
industrial trans fats require careful investigation.
Adapted from Mozaffarian et al19 with permission from the author. Copyright © 2011, The Authors; and the corresponding Harvard Health Letter23 with permission of
the publisher. Copyright © 2011, Harvard Health Publications. Authorization for this adaptation has been obtained both from the owner of the copyright in the original
work and from the owner of copyright in the translation or adaptation.
the remarkable advances in research and knowledge over just
the past 1–2 decades.
The most well-studied dietary patterns are traditional
Mediterranean and DASH diets (see http://circ.ahajournals.
org/content/123/24/2870/T3.expansion.html). In comparison with the conventional low-fat, high-carbohydrate DASH
diet, a modified DASH diet higher in vegetable fats and
lower in carbohydrates – ie, more similar to a Mediterranean
Mozaffarian Dietary and Policy Priorities 191
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diet – produces larger cardiometabolic benefits.24–26 Both
Mediterranean and DASH diet patterns improve a range of
risk factors, reduce long-term weight gain, and are consistently associated with lower risk of clinical events.19,21,27–29
Pathways of benefit appear diverse, including effects on BP,
glucose-insulin homeostasis, blood lipids and lipoproteins,
inflammation, endothelial function, arrhythmic risk, and possibly coagulation/thrombosis, paraoxonase 1 activity, and
the gut microbiome.20,21,30 Based on sociocultural and feasibility considerations, not every population in the world can
consume a traditional Mediterranean diet. Other examples of
Mediterranean-style dietary patterns, with adaption to various
regions of the world, have been proposed.31
Randomized clinical trials in both primary and secondary
prevention populations confirm the benefits of healthful, foodbased diet patterns that were identified in prospective cohort studies and short-term interventional trials: such diets significantly
reduce both cardiovascular events and diabetes mellitus.32–35 In
comparison, both observational cohorts and randomized trials
confirm little clinical benefit of diets focused on isolated nutrient
targets, such as low-fat, low-saturated fat diets, which produce
no significant benefits on cardiovascular disease, diabetes mellitus, or insulin resistance.36–39 This contrast in effectiveness of
healthful, food-based versus nutrient-focused dietary targets is
exemplified by comparing the results of 2 of the largest, longestduration dietary trials ever performed (Figure 2).
Based on this evidence, the 2015 Dietary Guidelines
Advisory Committee concluded that low-fat diets have no
effect on CVD and emphasized the importance of healthful,
food-based diet patterns.21 Notably, because additives such as
sodium and industrial trans fats can be added to or removed
from otherwise similar commercially prepared foods, a specific emphasis on their reduction is also warranted.21
Focusing on overall diet patterns, rather than individual
nutrients or foods, can also facilitate individual behavioral
counseling and population dietary recommendations, because
such patterns permit greater flexibility and personal preferences in diet choices.21 In addition, such patterns can lead to
health benefits by means of smaller changes across several
dietary factors, rather than major changes in a few factors,
potentially increasing effectiveness and compliance.
People who follow vegetarian diets are often health conscious and tend toward healthful food patterns. However, vegetarianism per se is neither necessary nor sufficient for a good
diet: indeed, french fries and soda are vegetarian, as are other
harmful factors such as refined grains, starches, added sugars, sweets, trans fats, and sodium. Thus, a vegetarian diet is
not a guarantee of health, whereas a nonvegetarian diet can be
rich in healthful foods. A cardioprotective diet pattern must
be characterized by the healthful foods that are included, not
simply specific items to be avoided (Table 2).
Other increasingly popular dietary patterns include
low-carbohydrate diets (minimizing all carbohydrates) and
paleo diets (attempting to conform to food types consumed
over millennia during human evolution). A main benefit of
both low-carbohydrate and paleo diets is reduced refined
grains, starches, and added sugars, which represent the
majority of total carbohydrates and ultraprocessed foods in
modern diets (see Carbohydrate-Rich Foods, below). Paleo
diets also emphasize fruits, nonstarchy vegetables, nuts,
and fish, each of which has health benefits. However, focus
on low carbohydrate could paradoxically reduce intakes
Table 3. Selected Areas of Concordance and Controversy Related to Diet and Cardiometabolic Health*
Broad Concordance and Less
Controversy or Uncertainty†
Benefits of:
Fruits, nonstarchy vegetables, nuts/
seeds, legumes, yogurt
Dietary fiber, potassium
Moderate alcohol use
Mediterranean-style or higher fat
DASH-style diet patterns
General Concordance but Some Remaining
Controversy and Uncertainty
Substantial Controversy and
Uncertainty
Insufficient Evidence for
Meaningful Conclusions
Seafood, whole grains
Cheese, low-fat milk
Whole-fat milk
Certain vegetable oils (eg, soybean, canola, extra
virgin olive)
Certain vegetable oils
Starchy vegetables other
(eg, corn, sunflower, safflower) than potatoes
n-3 and n-6 polyunsaturated fats, plant-derived Total or animal-derived
monounsaturated fats
monounsaturated fats
Phenolic compounds
Coconut oil
Coffee, tea, cocoa
Vitamin D, magnesium, fish oil
Harms of:
Partially hydrogenated vegetable oils,
processed meats
Moderate sodium
White/russet potatoes
Saturated fats, dietary
cholesterol
High sodium
High glycemic index/load
Unprocessed red meats, eggs
Sugar-sweetened beverages, foods
rich in refined grains, starches, added
sugars
Whole-fat milk
Palm oil
Butter
Greater than moderate alcohol use
Little effect of:
Total fat
Total carbohydrate
Poultry
Isolated antioxidant vitamins, calcium
100% fruit juice
Total protein, specific amino
acids
Noncaloric sweeteners
DASH indicates Dietary Approaches to Stop Hypertension.
*See article text for details on these topics and on other foods and nutrients.
†Some amount of controversy can be identified for almost any topic in science.
Concepts of local,
organic, farmed/wild,
grass fed, genetic
modification
192 Circulation January 12, 2016
Diet Quality, Energy Balance, Obesity, and Weight
Gain
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Figure 2. Contrasting results of randomized controlled dietary
trials focusing on isolated nutrients (Top) versus food-based
diet patterns (Bottom). The Women’s Health Initiative (WHI, Top)
focused on nutrient targets and reducing total fat and achieved
large long-term changes in these targets, yet had no significant effect on cardiovascular disease or diabetes mellitus. The
Prevención con Dieta Mediterránea (PREDIMED) trial (Bottom)
focused on food-based diet patterns and increasing specific
healthful foods, especially nuts and extra virgin olive oil (EVOO),
with smaller dietary changes than in WHI, yet demonstrating significant reduction in cardiovascular disease and diabetes mellitus. Both trials successfully altered long-term diets, although with
more modest dietary changes in PREDIMED. However, only the
food-based intervention resulted in clinical benefit. CHD indicates
coronary heart disease; CI, confidence interval; HR, hazard ratio;
MI, myocardial infarction. Adapted from Howard et al36 with permission of the publisher. Copyright © 2006, JAMA; and Estruch
et al34 with permission of the publisher. Copyright © 2013, The
New England Journal of Medicine. Authorization for this adaptation has been obtained both from the owner of the copyright in
the original work and from the owner of copyright in the translation or adaptation.
of other, healthful carbohydrate-containing foods such as
fruits, legumes, and minimally processed whole grains;
while paleo guidelines often recommend liberal intakes
of red meats, lard, and salt and the avoidance of legumes
and dairy. A maximally beneficial diet pattern should concurrently emphasize reductions in refined (not all) carbohydrates, processed meats, and foods high in sodium and
trans fat; moderation in unprocessed red meats, poultry,
eggs, and milk; and high intakes of fruits, nuts, fish, vegetables (excluding russet/white potatoes), vegetable oils,
minimally processed whole grains, legumes, and yogurt
(Figure 3).
Just as the science of cardiovascular risk is moving away from
theories based on single-nutrient components and singlesurrogate outcomes toward empirical evidence on foods and
dietary patterns and clinical events, the science of obesity is
moving away from simplistic ideas of energy balance, will
power, and calorie counting toward the elucidation of effects
of foods and diet patterns on the complex physiological determinants of long-term weight regulation. Of course, total calories matter in the short term, which is why people can initially
lose weight on nearly any type of diet21 – and explaining why
so many fad diets initially seem to work. In the short term,
the best predictor of success is mindfulness with one’s chosen
diet. However, for long-term weight maintenance and for cardiometabolic health independent of adiposity, healthful food–
based patterns are most relevant (Table 2).21
Because obesity is so challenging to treat after it has
developed, the primary prevention of weight gain is a promising strategy for individual patients and for populations. An
average American adult gains only ≈1 lb (0.45 kg) per year,28
consistent with habitual excess energy intakes as small as
≈50 kcal/d explaining the gradual weight gain seen in many
people.40 This finding accentuates just how well our body’s
homeostatic mechanisms actually function to maintain longterm weight stability. Yet, when sustained over many years,
this minor annual weight gain drives population obesity, eg,
leading to 10 lbs weight gain over 10 years, 20 lbs over 20
years, and so on.
In many countries, the current obesity epidemic is a striking change from decades of prior relative stability; in the
United States, for instance, obesity began steeply rising only
about 30 years ago.41 Abdominal adiposity, which produces the
largest metabolic harms, has also increased to a greater extent
than overall weight in many nations, especially in younger
women and certain middle-income countries.42 This modern
rise in overweight and obesity is also occurring in children
across most nations.43 The full long-term health consequences
of adiposity in these youthful generations remain to be seen,
in whom rates of type 2 diabetes mellitus, nonalcoholic fatty
liver disease, dyslipidemia, and hypertension exceed anything
observed at these ages in previous human history.44 The escalation of adiposity at youngest ages, including those <5 years
of age, is also informative for considering potential causes.
At such ages, population-wide declines in willpower, ability
to count calories, or physical activity are difficult to invoke,
reinforcing the likely role of environmental determinants of
weight dysregulation.
Elucidating the specific dietary and nondietary determinants of long-term weight homeostasis is critical to understand and reverse the environmental changes contributing to
this population imbalance. Growing evidence suggests that
energy imbalance is a consequence of multiple complex,
upstream effects, in particular poor diet quality (Figure 4). In
other words, poor diet quality is a driver of excess diet quantity. Furthermore, independently of energy balance, diet quality influences metabolic risk and propensity toward abdominal
adiposity. Mechanisms appear to include calorie-independent
effects of different types of foods on satiety, glucose-insulin
Mozaffarian Dietary and Policy Priorities 193
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Figure 3. Evidence-based dietary priorities for cardiometabolic
health. The placement of each food/factor is based on its net
effects on cardiometabolic health, across all risk pathways and
clinical end points, and the strength of the evidence, as well.
For dietary factors not listed (eg, coffee, tea, cocoa), the current
evidence remains insufficient to identify these as dietary priorities
for either increased or decreased consumption (see Table 3).
responses,45 liver fat synthesis,46 adipocyte function,47 visceral
adiposity,48 brain craving and reward,49 and even metabolic
expenditure.50 The gut microbiome also appears increasingly
important; eg, probiotics in yogurt appear to interact with
microbiota to reduce weight gain.28,29,51–54 In addition, independent of calories and body weight, one’s dietary pattern
strongly influences metabolic dysfunction including the risk
of diabetes mellitus.19,21 This is analogous to the weight-independent metabolic benefits of physical activity; diet quality
has similar robust metabolic benefits (or harms).
Based on these influences, when consumed over years,
certain foods may interfere with long-term weight homeostasis, others have relatively neutral effects, and others promote healthy weight regulation (Figure 5).19,21 For long-term
weight gain, food rich in refined grains, starches, and sugar
appear to be major culprits.28,29 Such rapidly digested, lowfiber carbohydrates drive many obesogenic pathways.45,46,48–50
Key foods in this group include potatoes, white bread, white
rice, refined breakfast cereals, crackers, sweets, soda, and
other ultraprocessed foods high in starches or sugars. In contrast, intakes of other foods, such as low-fat milk and wholefat milk, appear relatively neutral, suggesting they do not
perturb the normal homeostatic mechanisms for long-term
weight control.29,51 For meats, cheese, and eggs, influences on
long-term weight gain appear to vary depending on whether
they are consumed together with refined carbohydrates (in
which case more weight gain is evident) or in place of refined
carbohydrates (in which less weight gain or even relative
weight loss is seen).29
Conversely, increased fruits, nonstarchy vegetables, nuts,
yogurt, fish, and whole grains each appear to protect against
chronic weight gain: the more these foods are consumed, the
less the average weight gain.28,29,51,55 The mechanistic pathways
underlying these observed benefits are still being elucidated,
but may partly reflect opposing, protective effects in comparison with those of rapidly digested, refined carbohydrates.
Based on these complexities, choosing foods based on calorie content can lead to paradoxical dietary choices, industry
formulations, and policy recommendations. For example, the
US National School Lunch Programs recently banned whole
milk, but allows sugar-sweetened chocolate skim milk.56 This
untested intervention in 31 000 000 American children is
based on hypothesized effects of total calories, total fat, and
saturated fat in milk,56 rather than empirical evidence on the
health effects of whole versus skim milk. Longitudinal studies suggest no harms of whole-fat milk for obesity, diabetes
mellitus, or cardiovascular disease in adults28,29,51,57,58; that
dairy fat may have potential benefits for diabetes mellitus59–61;
that people switching to low-fat dairy products compensate
elsewhere in their diet by increasing consumption of carbohydrates29; and that children who habitually drink low-fat milk
gain more weight, and those who drink whole-fat milk gain
less weight, over time.62–66 Many other ironies result from a
calorie focus: eg, recommendations to consume fat-free salad
dressing, in which healthful vegetable oils have been removed
and replaced with starch, sugar, and salt; to minimize nuts
because of their fat content and energy density; and to consume low-fat deli meats that are loaded with sodium.
In sum, modern evidence indicates that different foods
have very different obesogenic potential depending on their
influence on complex, multifactorial pathways of weight regulation. To prevent long-term weight gain, calories and portion
sizes from certain types of foods should be minimized; from
others, not emphasized; and from others, actually increased.
Other conventional metrics – eg, total fat, energy density,
even added sugar– may not reliably identify how specific
foods influence weight gain.28,29,51 Consistent with this modern science, the 2015 Dietary Guidelines Advisory Committee
Report emphasizes food-based, healthful diet patterns as a primary recommendation to address obesity.21
Several other lifestyle factors appear to interact with diet
to influence adiposity. These include TV watching, sleep duration, circadian alignment, and possibly maternal-fetal (eg, placental) influences.28,41,67–70 For example, lower sleep duration
and altered circadian rhythms are linked to greater weight
gain and obesity, alter hunger and food preferences, and may
influence leptin, ghrelin, insulin, and gut-peptide concentrations.28,67 Greater hours spent TV watching also independently
increase obesity and weight gain28,68; 2 randomized trials in
children suggest this is primarily mediated by changes in diet
(rather than changes in, physical activity) owing to increased
eating in front of the TV and altered food choices attributable to viewed marketing.71,72 Increasing physical activity, of
course, has complementary benefits on weight maintenance
and metabolic health. Other societal and environmental influences likely have additional effects, including education,
income, race/ethnicity, social norms and networks, industry
marketing, and local food availability.10,11,73
In sum, these complex and often insidious influences
make unintended weight gain very easy. Conversely, based on
194 Circulation January 12, 2016
Diet Quality :
Refined Grains, Starches, Sugars
Nuts, Fruits, Vegetables
Whole Grains, Legumes
Yogurt, Cheese, Milk
Meats, Fish
Sugary Drinks, Alcohol, Coffee
Food Processing, Preparation
Overall Diet Patterns
Brain reward
Satiety, hunger
Glucose-insulin
responses
Brown fat?
Beige fat ?
Mitochondrial
unco
uncoupling?
Energy In
(Intake)
Figure 4. Diet quality, obesity, and metabolic risk – a modern paradigm. Diet quality
influences risk of adiposity through multiple
pathways, including altering energy intake,
energy expenditure, microbiome-host interactions, body fat composition, and metabolic function.
Energy Out
(Expenditure)
Microbiome
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Total Adiposity
Glucose-insulin
responses
Blood lipoproteins
Endothelial function
Adipocyte function
Inflammation
Fat
composition
Visceral
Hepatic
Hepat
Subcutaneous
cutaneou
Metabolic Dysfunction
Type 2 Diabetes Mellitus
these effects, modest behavioral and environmental improvements can attenuate or reverse chronic energy gaps, weight
gain, and adiposity. Based on current available evidence, key
diet-related priorities to reduce adiposity are reduction in
refined grains, starches, sugars, and meats; limiting industry
marketing especially from TV; increasing intakes of fruits,
vegetables, nuts, yogurt, fish, vegetable oils, and whole grains;
sleeping at least 7 to 8 hours nightly; and further elucidating
maternal-fetal, microbiome, and sleep/circadian influences.
Individual Susceptibility – Genetics and
Personalized Nutrition
Interest is growing in quantifying and understanding the determinants of interindividual variation in responses to diet. One
aim is personalized nutrition – the ability to provide customized dietary advice specialized to each person’s unique profile
of genes and other underlying characteristics.
Although candidate gene approaches have identified
several potential gene-diet interactions for traits including
blood cholesterol levels, a major challenge has been lack of
replication.74–77 Even for better documented gene-diet interactions – eg, for the APOE locus, dietary saturated fat, and
LDL-cholesterol; or for the CETP locus, alcohol, and highdensity lipoprotein (HDL) cholesterol – evidence for clinical
relevance of these differences remains weak.74 Large investigations pooling multiple cohorts have observed main (population) effects of either dietary influences or genes on major
cardiometabolic risk factors, but evidence for interactions
between diet and these genes is uncommon and, more relevantly, magnitudes of such potential interactions are often
small.78–83 One of the more promising gene-diet interactions,
notable in Hispanic populations, involves PNPLA3 and sugar
consumption in relation to obesity and liver fat accumulation84–86; additional interaction with dietary polyunsaturated
fats could also be present.87 Potential influences of diet on
epigenetic changes (eg, DNA methylation) and subsequent
cardiometabolic risk pathways are also of considerable interest,88 but relevant between-individual variation in these dietepigenetic responses has yet to be identified. At present,
compelling evidence is lacking to design personalized nutritional recommendations for cardiometabolic health based on
genetic variation.
Other underlying individual characteristics may be better determinants of personalized guidance. For instance,
carbohydrate-induced glycemic responses appear especially
detrimental in women,89 suggesting the particular need for
women to avoid rapidly digested carbohydrates. Other studies
suggest that people with greater insulin resistance experience
greater short-term weight loss with low-carbohydrate than
with low-fat diets.90 Similarly, patients with diabetes mellitus, impaired glucose tolerance, or atherogenic dyslipidemia
may also benefit most from reducing refined carbohydrates
and increasing proteins and vegetable fats.91–93 In addition,
­personalized ­cognitive-behavioral and culturally and socioeconomically sensitive strategies increase effectiveness of
clinical approaches to behavior change.94,95
Mozaffarian Dietary and Policy Priorities 195
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Figure 5. Protein-rich foods and long-term weight gain in 3 separate US prospective cohort studies, based on 16 to 24 years of followup. Weight changes every 4 years are shown for each 1-serving/d increase in consumption; decreased consumption would be associated with the inverse weight changes. To convert pounds to kilograms to pounds, divide by 2.2. All weight changes were adjusted for
age, baseline body mass index, sleep duration, and concurrent changes in smoking status, physical activity, television watching, alcohol use, and consumption of fruits, vegetables, glycemic load, and all of the dietary factors in the figure simultaneously. NHS indicates
Nurses’ Health Study; and HPFS, Health Professionals Follow-up Study. Reproduced from Smith et al29 with permission of the publisher.
Copyright © 2015, The American Journal of Clinical Nutrition.
Overall, although a promise of precision medicine has
been promoted,96 the massive, rapid shifts in cardiometabolic
disease occurring across nations and within populations over
time97 demonstrate the dominant influence of environmental
risk factors–and therefore the crucial importance of population approaches to address these environmental risks, including improved nutrition. In addition, population strategies to
address diet, such as economic incentives, can reduce socioeconomic-related disparities in health, whereas individual-based
approaches may exacerbate inequities.98,99 Evidence-based
personalized approaches, especially related to underlying nongenetic characteristics, should be considered a complement to
such population efforts.
Food Processing
Potential health effects of food processing are receiving
increasing attention.100–102 Nearly all foods must undergo some
processing to be consumed – eg, cooking, smoking, drying, salting, fermenting, preserving, heating, milling, refining. Benefits
of processing include improved palatability, variety, nutrient
bioavailability, shelf life, and convenience, and reduced risk of
food-borne pathogens. Potential harms include loss of nutrients such as fiber, phenolics, minerals, fatty acids, vitamins,
and other bioactives; increased doses and rapidity of digestion
of starch and sugar; and introduction of harmful factors such
as sodium, other preservatives, trans fats, heterocyclic amines,
advanced glycation end products, and other compounds.
196 Circulation January 12, 2016
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Many healthful foods are minimally processed (eg, fruits,
nuts, seafood), whereas several classes of processed foods are
harmful (eg, refined grains and cereals, preserved meats and
other high-sodium foods, food made with partially hydrogenated
oils). This can lead to an impression to always select “natural”
and always avoid processed or ultraprocessed foods. Because
many minimally processed foods are healthful, and many more
highly processed foods are not, this can serve as a useful general rule. However, it is not absolute. For example, some more
natural foods such as eggs, butter, and unprocessed red meats are
not linked to improved cardiometabolic outcomes (see Foods,
below), whereas other packaged or processed foods (eg, nut- and
fruit-rich snacks, phenolic- and polyunsaturated-rich vegetable
oils and margarines) improve cardiometabolic health.
Consequently, both the type of food and its processing
are relevant. Rather than focusing only on natural versus processed, the clinician, consumer, policy maker, and food producer should emphasize foods that are both innately healthful
and less processed; and reject foods rich in refined grains,
starch, and added sugars and harmful additives such as sodium
and trans fat (Table 2). In addition, as the global food system
moves toward more processed foods,103 further rigorous investigation is needed to define and disseminate methods for optimal processing, rather than an impractical focus on complete
absence of processing.
Dietary Supplements, Functional Foods
Use of dietary supplements, often at high or pharmacological
doses, is commonplace, despite the absence of convincing evidence for health benefits. Many supplements have been evaluated in observational studies and controlled trials as potential
therapies to prevent CVD or other conditions (Table 4).104–110
Evaluated doses in such trials have often exceeded usual or
even recommended dietary intakes, often under the assumptions that higher levels would produce greater benefits, and
that there was little risk of harm. Evidence has accrued that
most of these supplements have little CVD benefit, and that
certain supplements including β-carotene, calcium, and vitamin E may even be harmful.105–108,111–113 Presently, fish oil may
be considered as a supplement for CVD prevention, especially
among patients with prevalent CHD, based on reduction of
cardiac death109 (see Fish, above). Overall, the current evidence does not support use of other dietary supplements to
duplicate or complement the cardioprotective benefits of consumption of healthful foods.
Similar to dietary supplements, functional foods attempt
to improve health by incorporating bioactive compounds
that may alter lipid, vascular, and other metabolic pathways,
microbiome composition and function, and digestive and
inflammatory systems.114–121 Such putative compounds include
specific peptides, fatty acids, phenolics, vitamins, dietary
fibers, prebiotics/probiotics, and plant sterols/stanols. Many
of these bioactive compounds have demonstrated effects on
cardiovascular risk pathways in animal and human studies;
effects on blood lipids have been most often studied. To date,
the potential impact of these and other promising functional
foods on clinical end points is generally not established and
requires investigation.
Based on cholesterol-lowering effects, some organizations suggest that functional foods with plant sterols/stanols
can be considered for people with higher cholesterol levels
who do not qualify for or have insufficient response to pharmacotherapy116; although others have concluded that plant
sterols/stanols could have unacceptable toxicities.122,123 In the
Prevención con Dieta Mediterránea (PREDIMED) trial, supplementation with extra virgin olive oil or mixed nuts, combined with advice to consume a Mediterranean-type diet, led
to significant reductions in cardiovascular events,34 suggesting
that these more natural foods could be considered as evidenceinformed functional foods to reduce CVD events.
Table 4. Selected Dietary Supplements and Cardiovascular Health – Summary of the Evidence
β-Carotene
Some cohort studies have linked low serum levels or low dietary intake of β-carotene with higher CVD risk. Trials of β-carotene
supplements document no benefit in the general population and increased risk of lung cancer in patients who were at high risk of lung
cancer.
Calcium
Meta-analysis of trials suggests that calcium supplementation could increase the risk of myocardial infarction. No evidence for
cardiometabolic benefits.
Vitamin D
Evidence from observational studies indicates that low serum vitamin D levels, which are largely determined by sun exposure, are
associated with higher risk of CVD. Trials of vitamin D supplementation have not shown reductions in risk of CVD. Additional trials using
higher doses of vitamin D supplementation are ongoing.
Vitamin E
Several prospective cohort studies have linked vitamin E consumption or supplementation with lower risk of CHD. Trials have failed to
show reductions in CVD events with supplemental vitamin E, and 2 meta-analyses suggest that high-dose vitamin E supplements may
increase total mortality.
Folic acid, Vitamins B6, B12
Observational studies have associated low folate intake, low serum folate levels, and high homocysteine levels with higher risk of
CVD outcomes. Trials have confirmed that folic acid supplementation lowers blood homocysteine levels. Long-term trials have not
documented benefits of folic acid with or without vitamin B6 and vitamin B12 on CVD outcomes. In some trials, supplemental folic acid
was associated with increased risk of CVD.
Fish oil
Multiple cohort studies have documented an inverse relationship between fish intake and subsequent CHD, in particular, CHD death.
A meta-analysis of trials, largely in higher-risk populations, demonstrated a reduction in cardiac death with fish oil supplementation,
largely because of the benefits in patients with prevalent CHD.
Multivitamins
Although some cohort studies have seen lower CVD risk with multivitamin supplements, several trials, rated to be of fair to poor quality,
have not documented any clear CVD benefit of multivitamin use in mixed populations.
CHD indicates coronary heart disease; and CVD, cardiovascular disease.
Table updated from Mozaffarian et al.19
Mozaffarian Dietary and Policy Priorities 197
Emerging Issues: Organic,
Genetic Modification
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Public and media attention have increasingly considered
whether foods are organic (ie, produced without artificial
chemicals or pesticides) or genetically modified. Compared
with conventionally grown foods, organically grown foods
can contain higher concentrations of phenolic compounds
and fewer pesticide residues; yet, they also have similar nutrient profiles in many other respects.124–126 Evidence for the
health relevance of the observed differences in certain trace
compounds has generally not been identified and remains
controversial.127–129
Genetic modification uses biotechnology to alter crop or
livestock genes to improve insect or virus resistance, herbicide
tolerance, nutritional qualities, or resistance to environmental
stressors. In light of challenges in population growth, global
climate, soil and water availability, and changing pathogens,
genetic modification holds promise to improve production,
healthfulness, and sustainability. Several groups reviewing the
evidence for the health hazards of genetic modification have
found no evidence for harms130–134; however, methods for such
evaluation remain heterogeneous.135–139 Based on first principles, genetic modification should be considered a tool, not an
end point: its potential effects on human health (positive, neutral, negative) will relate to the specific compositional changes
in the food, not to the method itself.140
Based on current evidence, whether a food is organic or
genetically modified appears to be of relatively small health
relevance in comparison with the overall types of foods and
diet patterns actually consumed (Table 2). Health and environmental effects of both organic and genetically modified foods
require continued evaluation as these technologies progress.
Foods and Cardiometabolic Health
Individual foods represent a complex matrix of fatty acids,
proteins, carbohydrate quality, micronutrients, phytochemicals, and preparation and processing methods that
together modify cardiometabolic risk.9,141 Inference on the
health effects of different foods is optimally derived from
well-designed prospective observational and interventional studies of clinical end points, together with supportive evidence from interventional studies of surrogate risk
markers. Relevant mechanisms and pathways are further
informed and elucidated by animal and experimental models. Cardiometabolic effects of different foods can be envisioned along a spectrum of benefit versus harm (Figure 3):
when considering the health effects of any food, it is important to consider: compared with what?
Fruits, Nonstarchy Vegetables, Legumes, Nuts/Seeds
Minimally processed, plant-derived foods such as fruits,
nonstarchy vegetables, beans/legumes, and nuts/seeds are
consistently linked to better cardiometabolic outcomes
(Figure 6).142–145 These observed long-term benefits are supported by controlled trials of surrogate outcomes and clinical
end points using dietary patterns rich in these foods.19–21 The
effects of specific subtypes of these foods are less well established. The foods richest in phytochemicals (eg, berries, nuts)
appear to be particularly potent.
Starchy Vegetables
Potatoes are a widely consumed starchy vegetable. Although
potatoes contain fiber, potassium, vitamins C and B6, and
other trace minerals, they predominantly contain starch (long
chains of glucose) that is rapidly digested in the mouth and
stomach. This high-glucose load and rapid digestion would
predict cardiometabolic harms, similar to white rice and white
bread (see Carbohydrate-Rich Foods, below). Relatively few
long-term studies have assessed potatoes and cardiometabolic
outcomes. Among those that have, higher intake of potatoes,
including boiled and baked potatoes, is prospectively linked
to higher incidence of diabetes mellitus, whereas potatoes,
corn, and peas are linked to greater long-term weight gain,
in contrast to nonstarchy vegetables that are associated with
protection against weight gain and diabetes mellitus.28,55,146,147
Potatoes have also been cross-sectionally linked to greater
diabetes mellitus, higher blood glucose, and lower HDLcholesterol,148 and, in retrospective studies, higher risk of
stroke.149 Based on these concerns, russet/white potatoes are
generally excluded from recommendations to increase vegetable consumption.
The long-term effects of other specific varieties of potatoes
or other starchy vegetables are less established. Cassava is starchrich, similar to peeled potatoes, but the long-term cardiometabolic effects remain uncertain150,151; glycemic responses may be
ameliorated by its consumption in mixed meals. Similarly, the
long-term health effects of yams, sweet potatoes, and parsnips
(which each tend to contain relatively less starch relative to
fiber compared with russet or white potatoes), corn (which can
be considered either a grain or vegetable), and peas (which is a
legume) are not well established. In recent work, among major
vegetables consumed in the United States, potatoes, corn, and
peas were each associated with long-term weight gain, whereas
other vegetable subtypes were each associated with weight loss.55
Based on high-starch content, greater glycemic responses,
and some adverse long-term associations with clinical endpoints, high intakes of potatoes are not advisable. If consumed, small portion sizes, including the (nutrient-rich) skin,
and mixed meals (eg, mixed with healthful foods such as vegetable oils, fish, nonstarchy vegetables) would be prudent.
Carbohydrate-Rich Foods
Carbohydrate-rich foods comprise about half or more of all
calories in most diets globally. Although total carbohydrate
consumption has little relation to cardiometabolic health, the
quality of carbohydrate-rich foods is linked to risk (Figures 6
and 7).152–160 Notably, the conventional chemistry-based classification of simple (sugar) versus complex (starch) carbohydrates has little physiological relevance, because saccharide
chain length has little influence on digestion rate or metabolic
effects of different carbohydrates. More meaningful characteristics include dietary fiber content, glycemic responses to
digestion, processing (intact, partially milled, fully milled,
liquid), and whole-grain content.19
Each of these metrics can be altered relatively independently
(Figure 8). Whole grains include endosperm (starch), bran
(fiber, protein, B vitamins, minerals, flavonoids, tocopherols),
and germ (protein, fatty acids, antioxidants, phytochemicals).
When whole grains are intact (eg, quinoa) or partially intact (eg,
198 Circulation January 12, 2016
Endpoint
No. of
studies
No. of No. of
subjects events
Fruits
CHD
Stroke
Diabetes
16 PCs
8 PCs
7 PCs
817,155
377,159
368,232
Vegetables
CHD
Stroke
Diabetes
14 PCs
6 PCs
5 PCs
Green leafy
vegetables
Diabetes
Legumes
Whole
grains
Unit
RR
Reference
13,786
9,706
21,063
Each 1 serving/day (100 g)
Each 1 serving/day (100 g)
Each 1 serving/day (100 g)
0.94 (0.91, 0.98)
0.82 (0.75, 0.91)
0.94 (0.89, 1.00)
Gan Y 2015
Hu D 2014
Li M 2014
705,316
342,118
173,995
13,135
8,854
18,758
Each 1 serving/day (100 g)
Each 1 serving/day (100 g)
Each 1 serving/day (100 g)
0.95 (0.92, 0.98)
0.94 (0.90, 0.99)
0.98 (0.89, 1.08)
Gan Y 2015
Hu D 2014
Li M 2014
3 PCs
127,148
13,331
Each 1 serving/day (100 g)
0.76 (0.62, 0.94)
Li M 2014
Stroke
CHD
Diabetes
6 PCs
4 PCs
2 PCs
254,628
198,904
100,179
6,690
6,514
2,746
Each 4 servings/wk (400 g)
Each 4 servings/wk (400 g)
Each 4 servings/wk (400 g)
0.98 (0.84, 1.14)
0.86 (0.78, 0.94)
0.78 (0.50, 1.14)
Afshin A 2014
Afshin A 2014
Afshin A 2014
CHD
Stroke
Diabetes
6 PCs
4 PCs
10 PCs
-207,984
385, 868
5,383
877
19,829
high vs low
2.5 vs. 0.2 servings/day
Each 1 serving/day (50 g)
0.78 (0.71, 0.86)
0.83 (0.68, 1.14)
0.81 (0.74, 0.89)
Tang G 2015
Mellen P 2008
Aune D 2013
CHD death
Nonfatal CHD
Diabetes
5 PCs, 1 RCT
3 PCs, 1 RCT
5 PC, 1 RCT
206,114
141, 390
230,216
6,749
4,280
13,308
Each 4 servings/week (4 oz [113 g])
Each 4 servings/week (4 oz [113 g])
Each 4 servings/week (4 oz [113 g])
0.76 (0.69, 0.84)
0.78 (0.67, 0.92)
0.87 (0.81, 0.94)
Afshin A 2014
Afshin A 2014
Afshin A 2014
Fish
CHD Death
Stroke
Diabetes
12 PCs
8 PCs
13 PCs
282,075
394,958
481,489
4,195
16,890
20,830
2-4 servings/week vs. ≤3 servings/month
≥ 5 vs. 1 serving/week
Each 1 serving/day (100 g)
0.79 (0.67, 0.92)
0.88 (0.81, 0.96)
1.12 (0.94, 1.34)
Zheng J 2012
Chowdhury R 2012
Wu J 2012
Unprocessed
red meats
CVD death
Stroke
Diabetes
13 PCs
5 PCs
9 PCs
1,070,215 24,241
239,251
9,593
447,333 28,206
high vs low
Each 1 serving/day (100 g)
Each 1 serving/day (100 g)
1.12 (0.95, 1.33)
1.13 (1.03, 1.23)
1.19 (1.04, 1.37)
Abete I 2014
Chen G 2013
Pan A 2011
Processed
red meats
CVD death
Stroke
Diabetes
6 PCs
5 PCs
8 PCs
1,186,761 35,537
239,251
9,593
372,391 26,234
Each 1 serving/day (50 g)
Each 1 serving/day (50 g)
Each 1 serving/day (50 g)
1.24 (1.09, 1.40)
1.11 (1.02, 1.20)
1.51 (1.25, 1.83)
Abete I 2014
Chen G 2013
Pan A 2011
White meat
(poultry, rabbit)
CVD death
5 PCs
1,197,805 31,535
Each 1 serving/day (100 g)
1.00 (0.87, 1.15)
Abete I 2014
Total dairy
CHD
Stroke
Diabetes
10 PCs
16 PCs
14 PCs
253,260
764,635
459,790
8,792
28,138
35,863
high vs low
high vs low
Each 1 serving/day
0.94 (0.82, 1.07)
0.88 (0.82, 0.94)
0.98 (0.96, 1.01)
Qin L 2015
Hu D 2014
Chen M 2014
Milk
CHD
Stroke
Diabetes
6 PCs
9 PCs
7 PCs
259,162
525,609
167,982
4,391
22,382
15,149
Each 1 serving/day (200 ml)
high vs low
Each 1 serving/day (200 g)
1.00 (0.96, 1.04)
0.91 (0.82, 1.01
0.87 (0.72, 1.04)
Soedamah-Muthu S 2011
Hu D 2014
Aune D 2013
Cheese
CHD
Stroke
Diabetes
7 PCs
5 PCs
8 PCs
-282,439
242,960
-9,919
17,620
high vs low
high vs low
Each 1 serving/day (50 g)
0.84 (0.71, 1.00) Qin L 2015
0.94 (0.89, 0.995) Hu D 2014
0.92 (0.86, 0.99) Aune D 2013
Butter
CHD
Stroke
5 PCs
3 PCs
-173,853
-5,299
high vs low
high vs low
1.02 (0.88, 1.20)
0.95 (0.85, 1.07)
Qin L 2015
Hu D 2014
Yogurt
CHD
Diabetes
5 PCs
9 PCs
-408,096
-32,995
high vs low
Each 1 serving/day (½ cup)
1.06 (0.90, 1.34)
0.82 (0.70, 0.96)
Qin L 2015
Chen M 2014
Eggs
CHD
Stroke
Diabetes
7 PCs
6 PCs
5 PCs
263,938
210,404
69,297
5,847
7,579
4,889
Each 1 serving/day (1 egg)
Each 1 serving/day (1 egg)
≥1 egg/day vs. never or <1 egg/week
0.99 (0.85, 1.15)
0.91 (0.81, 1.02)
1.42 (1.09, 1.86)
Rong Y 2013
Rong Y 2013
Shin J 2013
100% fruit juice
Diabetes
11 PCs
407,288
34,549
Each 1 serving/day (8 oz.)
1.06 (0.98, 1.14)
Imamura F 2015
Diabetes, non-BMI adjusted 13 PCs
Diabetes, BMI adjusted
17 PCs
CHD
4 PCs
421,973
464,937
194,664
36,492
38,253
7,396
Each 1 serving/day (8 oz.)
Each 1 serving/day (8 oz.)
Each 1 serving/day (8 oz.)
1.42 (1.19, 1.69)
1.27 (1.10, 1.46)
1.17 (1.10, 1.24)
Imamura F 2015
Imamura F 2015
Xi B 2015
Ding M 2014
Ding M 2014
Ding M 2014
Nuts and
seeds
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Sugarsweetend
beverages
Coffee—
Caffeneited
Decaffeneited
CVD
Diabetes
Diabetes
29 PCs
11 PCs
11 PCs
----
----
3 vs. 0 cups/day, nonlinear
Each 1 serving/day (1 cup)
Each 1 serving/day (1 cup)
0.89 (0.85, 0.93)
0.91 (0.89, 0.94)
0.94 (0.91, 0.98)
Tea
CHD
Diabetes
Stroke
7 PCs
14 PCs
8 PCs
235,368
503,165
307,968
8,328
35,574
11,329
Each 1 serving/day (1 cup)
Each 1 serving/day (1 cup)
Each 1 serving/day (1 cup)
0.90 (0.81, 0.996) Zhang C 2015
0.98 (0.96, 0.995) Yang W 2014
0.94 (0.90, 0.973) Zhang C 2015
0.5
1
2
Realtive risk (95% Cl)
Figure 6. Meta-analyses of foods and coronary heart disease, stroke, and diabetes mellitus. BMI indicates body mass index; CHD, coronary heart disease; CI, confidence interval; CVD, cardiovascular disease; PC, prospective cohort; RCT, randomized clinical trial; and RR,
relative risk.
Mozaffarian Dietary and Policy Priorities 199
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steel-cut oats, stone-ground bread), the bran protects the starchy
endosperm from oral, gastric, and intestinal digestion, thereby
reducing glycemic responses. In finely milled whole-grain
products (eg, most whole-grain breads, breakfast cereals), the
bran (fiber) and germ content remain similar, but the exposed
endosperm can be rapidly digested, resulting in higher glycemic responses. When the bran and germ are removed entirely
(eg, refined grains: white bread, white rice, most cereals and
crackers), only starchy endosperm remains, with high glycemic
response and containing little fiber, minerals, or other nutrients.
Some high-starch vegetables (eg, russet or white potatoes) have
similar metabolic characteristics as refined grains (see Starchy
Vegetables, below). Refined grains and high-starch vegetables
are digested rapidly, with blood glucose and insulin responses
that can be similar to simple sugars. Finally, sugars in liquid
form (eg, soda, sports drinks, sweetened ice teas) appear even
less satiating and more obesogenic than equivalent sugar in solid
form (see Sugar-Sweetened Beverages, Noncaloric Sweeteners;
and Carbohydrates, Added Sugars, Fructose; below).
Based on these effects, refined grains (starchy endosperm
without the bran or germ), other starch-rich foods (eg, white
potatoes), and added sugars appear to induce relatively similar
cardiometabolic harms. When starch enters the mouth without
the natural shelter of a whole-grain or fiber-rich food structure,
oral amylase promptly initiates its breakdown into free glucose, a process rapidly completed in the upper small intestine.
Consequently, refined grains such as white bread, corn flakes,
and rice; starchy foods such as russet or white potatoes; and
pure table sugar all produce brisk rises in blood glucose and
insulin (known as their glycemic index; or, when multiplied
by portion size, as their glycemic load).161 This rapid digestion
may induce multiple adverse effects, potentially stimulating
reward/craving areas in the brain, activating hepatic de novo
lipogenesis, increasing uric acid production, and promoting
visceral adiposity.49,162–166 In addition, high glycemic load diets
may even reduce total energy expenditure.50
In addition to direct harms, low-quality carbohydrates
such as refined grains, certain potatoes, sugar-sweetened beverages (SSBs), and sweets may increase cardiometabolic risk
by displacing other, healthier foods in the diet, eg, fruits, vegetables, nuts, legumes, and minimally processed whole grains.
Consistent with this constellation of adverse effects, poorquality carbohydrates are associated with long-term weight
gain, diabetes mellitus, and CVD.29,89,158,167 Harms appear to be
larger in women89,167 and others predisposed to insulin resistance and atherogenic dyslipidemia, and smaller in men and in
younger, lean individuals with high physical activity.
Based on their adverse effects and pervasiveness in modern diets, reducing refined grains, starches, and added sugars is a major dietary priority for cardiometabolic health.21
Although SSB intake is declining in the United States, intakes
of added sugars in other foods and, even more so, of refined
grains continue to represent a major part of the diet. Currently,
nearly 3 in 4 Americans consume too many refined grain
products.21 Indeed, many people seek out these products, erroneously believing they are beneficial based on their promotion as low-fat or fat-free foods. Recognizing this pervasive
confusion, the 2015 Dietary Guidelines Advisory Committee
specified that, “consumption of ‘low-fat’ or ‘nonfat’ products
with high amounts of refined grains and added sugars should
be discouraged.”21 Because of the multiple independent characteristics that influence carbohydrate quality (eg, fiber, glycemic response, processing, whole-grain content), no single
criterion appears perfect for distinguishing carbohydrate-rich
foods. Among several recommended metrics, a ratio of total
carbohydrate to dietary fiber (g/serving) of <10:1 is a helpful
practical guide to identify more healthful grain choices.168,169
Meats
Similar to many other foods, guidelines on meat consumption
in cardiometabolic health were historically based on minimally adjusted ecological comparisons and theorized effects
of isolated nutrient content (eg, saturated fat, dietary cholesterol). However, modern evidence supports relatively neutral
cardiovascular effects of saturated fat and dietary cholesterol
and more relevant effects of other compounds in meats, such
as heme iron, sodium, and other preservatives (see Nutrients
and Cardiometabolic Health, below).
Consistent with these findings, although a minority of
individual studies suggest similar cardiovascular risk for
unprocessed red meat versus processed meats,170,171 many
other individual studies and meta-analyses support a much
stronger effect of processed meats, including low-fat deli
meats, on CVD (Figure 6).172–174 Based on the observed
effect sizes and relationships seen with other, noncardiovascular outcomes, residual confounding could explain some
or all of the observed modest associations of unprocessed
red meat with CVD.175 In contrast, the observed association
of processed meats with CVD is quite plausible: much of it
can be explained merely by the predicted effects of the high
levels of sodium (~400% higher in processed meats) on BP
levels and the subsequent effects of this elevated BP on clinical endpoints.176 Diet-microbiome interactions may also play
a role,177 although such interactions would predict similar or
stronger risk for unprocessed red meats than processed meats,
when in fact the reverse is seen in many populations.
Interestingly, both red and processed meats, regardless of
fat content, are linked to a higher incidence of diabetes mellitus, although with approximately double the risk, gram-forgram, for processed meats than for unprocessed red meats.172,178
Mechanisms require further study, but this observed risk for diabetes mellitus may be linked to iron content179,180 and possibly
lipid and amino acid metabolites, advanced glycation end products, trimethylamine N-oxide, and nitrates/nitrites.181,182
In sum, these findings provide little support for conventional guidelines to choose meats based on fat content, ie to
focus on selecting lower-fat or lean meats. Rather, it would be
prudent to consume small amounts of unprocessed red meats
(eg, 1–2 servings/wk) to obtain readily bioavailable iron and
zinc, while minimizing or entirely avoiding processed meats
such as bacon, sausage, salami, and low-fat processed deli
meats (chicken, turkey, pork, roast beef).183
Differences in bovine feeding systems can influence nutrient contents of meats. For example, in comparison with grain,
grass feeding results in less intramuscular fat and therefore,
when visible (extramuscular) fat is trimmed away, higher
contents of omega-3 polyunsaturated fats, conjugated linoleic
acid, and vitamins A and E, and lower contents of saturated,
200 Circulation January 12, 2016
Endpoint
No. of
studies
No. of
subjects
No. of
events
Unit
RR
Reference
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Total carbohydrate
CHD
Stroke
Diabetes
10 PCs
4 PCs
8 PCs
306,244
170,348
508,248
5,249
1,851
11,539
Each 5% E vs. SFA
high vs low
high vs low
1.07 (1.01, 1.14)
1.12 (0.93, 1.35)
1.11 (1.01, 1.22)
Jakobsen M 2009
Cai X 2015
Alhazmi A 2012
Glycemic index
CHD
Stroke
Diabetes
10 PCs
7 PCs
13 PCs
255,610
225205
--
9,552
3046
35,715
high vs low
high vs low
high vs low
1.07 (0.96, 1.21)
1.1 (0.99, 1.21)
1.19 (1.14, 1.24)
Mirrahimi A 2014
Cai X 2015
Bhupathiraju S 2014
Glycemic load
CHD
Stroke
Diabetes
10 PCs
6 PCs
17 PCs
262,892
222,308
--
10,785
2,951
46,115
high vs low
high vs low
high vs low
1.23 (1.06, 1.42)
1.19 (1.05, 1.36)
1.13 (1.08, 1.17)
Mirrahimi A 2014
Cai X 2015
Bhupathiraju S 2014
Total dietary fiber
CHD
Diabetes
16 PCs
12 PCs
-359,167
---
high vs low
high vs low
0.93 (0.91, 0.96)
0.81 (0.73, 0.9)
Wu Y 2015
Yao B 2014
Cereal Fiber
CHD
Diabetes
5 PCs
11 PCs
-389,047
--
high vs low
high vs low
0.92 (0.85, 0.99)
0.77 (0.69, 0.85)
Wu Y 2015
Yao B 2014
Fruit Fiber
CHD
Diabetes
5 PCs
9 PCs
-341,668
---
high vs low
high vs low
0.92 (0.86, 0.98)
0.94 (0.88, 0.99)
Wu Y 2015
Yao B 2014
Vegetable Fiber
CHD
Diabetes
5 PCs
10 PCs
-345,096
---
high vs low
high vs low
0.95 (0.89, 1.01)
0.95 (0.84, 1.07)
Wu Y 2015
Yao B 2014
Total fat
CHD
Stroke
Diabetes
7 PCs
4 RCTs
4 PCs
126,439
49,246
247,755
--10,388
high vs low
intervention vs control
high vs low
0.99 (0.88, 1.09)
1.01 (0.90, 1.13)
0.93 (0.86, 1.01)
Mente A 2009
Hooper L 2012
Alhazmi A 2012
Saturated fat
CHD
Stroke
Diabetes
20 PCs
8 PCs
7 PCs
276,763
179,436
352,262
10,155
2,362
9,566
top vs. bottom tertile
high vs low
high vs low
1.03 (0.98, 1.07)
0.81 (0.62, 1.05)
0.99 (0.91, 1.07)
Chowdhury R 2014
Siri-Tarino M 2010
Alhazmi A 2012
Monounsaturated fat
CHD
Stroke
Diabetes
9 PCs
11 PCs
6 PCs
144,219
-196,519
6,031
-6,687
top vs. bottom tertile
top vs. bottom tertile
high vs low
1.06 (0.97, 1.17)
0.83 (0.71, 0.97)
0.99 (0.90, 1.09)
Chowdhury R 2014
Schwingshakl L 2014
Alhazmi A 2012
CHD
9 PCs
262,612
12,198
substituting 5% energy intake
from LA for carbohydrate
0.90 (0.85, 0.94)
Farvid M 2014
Diabetes
5 PCs
196,519
6,687
high vs low
0.90 (0.79, 1.04)
Alhazmi A 2012
Omega-3 –
Plant Sources
CHD
Stroke
Diabetes
5 PCs
3 PCs
7 PCs
89,700
98,410
131,940
5,788
1,300
7,365
high vs low
high vs low
Each 0.5 g/day
0.94 (0.85, 1.04)
0.96 (0.78, 1.17)
0.89 (0.81, 0.98)
Pan A 2012
Pan A 2012
Wu J 2012
Omega-3 –
Seafood Sources
CHD
Fatal CHD
Stroke
Diabetes
16 PCs
16 PCs, 5 RCTs
8 PCs
16 PCs
422,786
363,003
242,076
540,184
9,089
5,951
5,238
25,670
top vs bottom tertile
250 mg/day vs none
high vs low
Each 250 mg/day
0.87 (0.78, 0.97)
0.64 (0.50, 0.80)
0.90 (0.81, 1.01)
1.04 (0.97, 1.10)
Chowdhury R 2014
Mozaffarian D 2006
Larsson S 2012
Wu J 2012
CHD
CHD
4 PCs
4 PCs
145,132
139,836
-4,965
high vs low
Each 2% E vs. carbohydrate
1.32 (1.10, 1.54)
1.23 (1.11, 1.37)
Mente A 2009
Mozaffarian D 2006
Stroke
CVD death
12 PCs, 3 CCs
11 PCs
225,693
229, 785
8,135
--
high vs low
high vs low
1.34 (1.19, 1.51)
1.12 (1.06, 1.19)
Li X 2012
Poggio R 2015
CHD
Stroke
6 PCs
11 PCs
81,612
23,606
3,058
7,066
Each 1.38 g/day
Each 1.64 g/day
0.92 (0.81, 1.04)
0.79 (0.68, 0.90)
D'Elia L 2011
D'Elia L 2011
Polyunsaturated fat
Total or Omega-6
Trans fat
Dietary sodium
Dietary potassium
0.5
1
2
Realtive risk (95% Cl)
Figure 7. Meta-analyses of nutrients and coronary heart disease, stroke, and diabetes mellitus. CHD indicates coronary heart disease;
CI, confidence interval; LA, linoleic acid; PC, prospective cohort; RCT, randomized clinical trial; RR, relative risk; and SFA, saturated
fatty acid.
monounsaturated, and trans-18:1 fats.184,185 However, although
grass feeding consistently increases the relative proportions
(as a percent age of total fatty acids) of omega-3 fats, the absolute content (g per 100 g beef) can be the same, higher, or even
lower because of decreased total fat content of the meat.184,185
Thus, the health implications of grass feeding and these modest nutrient differences require further study.
Poultry, Eggs
Relatively few studies have focused on poultry as a risk factor
for CVD or diabetes mellitus, with few systematic reviews or
meta-analyses (Figure 6).174 In several large studies, poultry is
not significantly associated with CVD events;174,186–189 and in
other cohorts, with modestly lower risk of CVD, with smaller
observed benefits than seen for fish, nuts, or legumes.52,53 Large
Mozaffarian Dietary and Policy Priorities 201
Endosperm
(mostly starch/complex
carbohydrates, some B vitamins
and protein)
Bran
(mostly fiber, also protein,
B vitamins, minerals,
phytochemicals)
Germ
(protein, fatty acids,
antioxidants, phytochemicals)
Blood glucose levels
High glycemic index
(e.g., table sugar, baked potato,
white bread)
Low glycemic index
(e.g., apple, lentils,
pearl barley)
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0
1
Hours after consumption
studies evaluating poultry and incident diabetes mellitus have
shown mixed results including higher risk, no risk, and lower
risk.178,190–195 These conflicting findings do not permit a strong
inference on the cardiometabolic effects of poultry.
Egg consumption has no significant association with incident CVD in general populations (Figure 6).196,197 Conversely,
eggs may influence and interact with diabetes mellitus.197
Frequent consumers (7+ eggs/wk) have higher new-onset diabetes mellitus; and among patients with prevalent diabetes
mellitus, frequent consumers experience more clinical CVD
events. On the other hand, higher egg consumption is associated with lower risk of hemorrhagic stroke,196 potentially related
to the protective effects of dietary cholesterol on vascular fragility.198,199 As with poultry, the relevance of these conflicting
findings remains uncertain. Overall evidence suggests small
cardiometabolic effects of occasional consumption (eg, up to
2–3 eggs/wk); and possible harm with frequent consumption,
especially among diabetics patients. Of note, the 2015 Dietary
Guidelines Advisory Committee concluded that dietary cholesterol is not a “nutrient of concern for overconsumption,”21 based
on low mean population cholesterol intake and no appreciable
relationships between dietary cholesterol and serum cholesterol
or clinical cardiovascular events in general populations.21a
In sum, occasional consumption of poultry and eggs
appears relatively neutral for cardiometabolic health, without strong evidence for either risks or benefits. Until more
evidence is generated, it may be prudent to consider these
foods as healthful alternatives to harmful foods (eg, processed
meats, refined grains, sugars) and yet as relatively unhealthy
alternatives in comparison with beneficial foods (eg, fish, nuts,
legumes, fruits).
Fish
The cardiovascular effects of fish and omega-3 consumption
have been studied for decades. In comparison with little or
no consumption, moderate consumption of fish (≈2+ servings/
wk) and long-chain omega-3 (≈250 mg/d) associates with
Figure 8. For defining carbohydrate quality, several
characteristics appear to independently alter the
cardiometabolic health effects of carbohydrate-rich
foods. These include whole-grain content (top left
panel), ie, based on the content of milled, semiprocessed, or intact whole grain including the bran and
germ; fiber content (top right panel), influenced
largely by the content of bran; food structure (bottom
left panel), in particular, whether the food is solid or
liquid (such as sugar-sweetened beverages); and glycemic response (bottom right panel), determined by
the amount and accessibility of starch and sugar. GI
indicates glycemic index.
2
lower risk of fatal CHD (Figures 6 and 7).200–202 In contrast,
higher intakes do not appear to appreciably reduce risk further. In comparison with fatal cardiac events, fish consumption has weaker associations with nonfatal cardiac events and
with stroke.201,203,204 The specificity for fatal CHD, rather than
all CVD events, suggests that this association may not be fully
explained by residual confounding. This finding is also consistent with meta-analyses of randomized fish oil trials that
demonstrate risk reductions for cardiac death, but not total
CVD, CHD, or stroke.109 However, these latter pooled results
obscure the differences in results of individual randomized trials over time: 4 of 5 earlier trials, yet none of several newer
trials, demonstrate benefits.205 These discrepant results could
be attributable to more aggressive lipid- and BP-lowering
drug treatment in recent trials. Alternatively, because the
dose-response effect of omega-3’s for fatal CHD appears
nonlinear,200,201 higher background intakes of fish among subjects enrolled in more recent trials may have diminished the
ability to detect any benefits of adding fish oil.205 Additional
clinical trials of fish oil supplements are ongoing,206 but may
not be adequately powered to evaluate fatal (rather than total)
CHD or subgroups with low fish intake, for whom the benefits
appear most plausible.
Notably, in meta-analyses of multiple controlled interventions, fish and omega-3 consumption improve major physiological risk factors for CVD including BP, heart rate, endothelial
function, triglycerides, and adiponectin.201,205 Omega-3s also
reduce inflammatory biomarkers, reduce myocardial oxygen
use, and enhance cardiac function.201,205 Overall, although the
null results of recent fish oil trials are concerning, the cumulative evidence from observational studies, clinical trials, and
controlled interventional studies continues to favor plausible
cardiovascular benefits of modest dietary fish consumption, in
particular for the endpoint of CHD death. Based on conflicting findings from recent trials, fish oil supplementation has
uncertain benefits but an excellent safety profile and may be
202 Circulation January 12, 2016
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considered as an adjunct to fish intake or for high-risk patients
who do not eat fish.
The effects of fish consumption on other vascular conditions including stroke, heart failure, atrial fibrillation,
and cognitive decline remain unclear, with conflicting findings.201,203,207,208 Fish and omega-3 intake also have little association with the risk for diabetes mellitus, although protective
associations are seen in Asian populations209–211 and fish oil
supplementation modestly raises adiponectin.212 Types of
fish consumed and preparation methods may influence cardiometabolic effects, with greatest benefits perhaps obtained
from nonfried, dark-meat (oily) fish that contain up to 10-fold
higher omega-3 fatty acids than white-meat fish.201
Growing evidence suggests that the presence of persistent
organic pollutants (eg, dioxins, polychlorinated biphenyls) may
partly reduce cardiometabolic benefits of fish consumption213–215;
less evidence suggests a potential for net harm, due to the countervailing benefits of omega-3s. Methylmercury consumed from
fish has no detectable influence on incident cardiovascular events,
hypertension, or diabetes mellitus.216–218 To optimize neurodevelopment in their children attributable to the benefits of fish consumption, women who are or may become pregnant or nursing
should follow US Food and Drug Administration guidance to eat
2 to 3 servings/wk of a variety of fish lower in mercury, while
avoiding only selected specific species (Gulf of Mexico tilefish,
shark, swordfish, king mackerel; albacore tuna up to 6 oz/wk).219
While patients often ask about health effects of farmed
(aquaculture) versus wild-caught species, few species are commonly available as both: most are either predominantly farmed
(eg, tilapia, catfish, carp, shrimp, oysters) or wild-caught (eg,
tuna, pollock, crab, cod).220 One exception is salmon, of which
about one-third are wild-caught (principally from Alaska)
and two-thirds are farmed (eg, from Norway, Chile). Because
farmed salmon are fed, while wild salmon hunt for their food,
farmed salmon have similar or higher levels of omega-3 fatty
acids201 and likely similar net health benefits.200
Milk, Cheese, Yogurt
The cardiometabolic effects of different dairy foods represent
a major unanswered question of modern nutrition science.
Most dietary guidelines simply group different types together
(eg, grouping milk, cheese, and yogurt as “dairy”), categorize
these by fat content, and then recommend selection of low-fat
products.21 Such recommendations largely derive from theoretical considerations about selected single nutrients (calcium,
vitamin D, calories, saturated fat), rather than empirical evidence on health effects of the actual foods.
In longitudinal studies evaluating habitual intakes of dairy
foods, relationships with CVD and diabetes mellitus do not
consistently differ by fat content but appear more specific to
food type: eg, cheese, yogurt, milk, butter (Figure 6).57,221–226
For example, the intake of yogurt, but not milk, is consistently
associated with lower incidence of diabetes mellitus, whereas
the intake of cheese, which has high calorie, fat, and saturated fat content, is also associated with lower diabetes risk
in several although not all studies.57,179–184,224,226–228 Although
total milk intake is generally unassociated with diabetes mellitus, fermented milk is linked to lower risk,57,227,229 suggesting
a potential influence of fermentation, particularly in light of
the separate findings for cheese. Bacterial cultures used for
fermentation can synthesize vitamin K2 (menaquinones),
which may improve insulin sensitivity.230,231 These findings
suggest that the health effects of dairy may depend on multiple complex characteristics, eg, probiotics in yogurt, fermentation of cheese. The metabolic effects of specific dairy foods
and fermented products represent promising areas for further
investigation.
In short-term randomized trials, adding milk or dairy to
energy-restricted diets increases lean mass and reduces body
fat, whereas no significant body compositional effects are seen
when adding dairy to ad libitum diets.232,233 Long-term effects
may vary by the type of dairy. For instance, children who drink
more low-fat milk gain more weight, whereas those who drink
more whole-fat milk gain less weight, over time.62–66 In longitudinal studies among adults, neither low-fat nor whole-fat
milk are appreciably related to chronic weight gain.28,29,51 This
lack of difference may relate to caloric compensation: when
adults consume more low-fat dairy, they compensate in the
long term by increasing their consumption of carbohydrates.29
The STRIP trial randomly assigned 1062 Finnish infants
to dietary intervention versus control, with follow-up for up to
20 years. For the first 3 years, the intervention focused on lowering total fat and saturated fat, while also increasing unsaturated fats from canola oil, other vegetable oils, and fish. At 3
years, no differences were seen in body weight, even among
children most compliant with the low-fat diet.234 Subsequently,
the intervention group received comprehensive dietary counseling, including to replace saturated fat with unsaturated fat,
reduce salt intake, replace refined grains/cereals with whole
grains, increase dietary fiber, increase fruits and vegetables,
avoid smoking, and be physically active.235 The control group
received only basic health education. Unsurprisingly, this
comprehensive lifestyle advice, in comparison with no intervention, improved metabolic health.235 These results provide
little inference on the specific effects of lowering saturated fat
or dairy fat among children.
The impact of cheese consumption on long-term weight
may vary depending on how it is consumed: more weight gain
is seen when cheese is accompanied by refined carbohydrates,
and less weight gain or even relative weight loss when cheese
replaces refined carbohydrates.29 Yogurt appears protective
against long-term weight gain,28,29,51 although when sugarsweetened, approximately half the benefit appears lost.29
Animal-experimental studies and trials in humans suggest that
probiotics and probiotic-microbiome interactions play a key
role in the protective effects of yogurt, both for obesity and
related conditions such as gestational diabetes.52–54,236–241
Interestingly, dairy fat itself may promote cardiometabolic
health. In cohorts using objective blood biomarkers, greater
dairy fat consumption is associated with a lower incidence of
diabetes mellitus59–61,242,243 and CHD,39,244,245 and with mixed
findings for stroke.246 It remains unclear whether such findings relate to health benefits of specific dairy fatty acids (eg,
branched-chain fatty acids, medium-chain saturated fats, specific ruminant trans fats), other lipid-soluble factors in dairy
fat, other factors in high-fat dairy foods (eg, production of
vitamin K2 from fermentation of cheese), or unknown endogenous (nondietary) determinants of these blood biomarkers.247
Mozaffarian Dietary and Policy Priorities 203
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Whatever the explanation, little evidence supports the opposing hypothesis, ie, the superiority of low-fat dairy products for
health, including for risk of obesity.
In sum, dairy products represent a diverse class of foods,
with complex effects that vary by specific product type and
with emerging mechanistic pathways that appear to include
influences of fermentation and probiotics. No long-term studies support harms, and emerging evidence suggests some
potential benefits, of dairy fat or high-fat dairy foods such as
cheese. Together these findings provide little support for the
prevailing recommendations for dairy intake that are based
largely on calcium and vitamin D contents, rather than complete cardiometabolic effects; that emphasize low-fat dairy
based on theorized influences on obesity and CHD, rather than
empirical evidence; or that consider dairy as a single category,
rather than separately evaluating different dairy foods. The
current science supports consuming more yogurt and possibly cheese; with the choice between low-fat versus whole-fat
being personal preference, pending further investigation. This
new evidence also calls for substantial further investment in
research on cardiometabolic effects of dairy foods, including
relevant components and molecular mechanisms.
Butter
In a large pooling project of European cohorts, individuals
consuming any butter, in comparison with none, experienced
a lower risk of diabetes mellitus.248 However, among butter
consumers, no further dose-response was seen, suggesting
potential for reverse causation (bias) among nonconsumers. In either case, these findings would suggest that butter
is, at worst, neutral for diabetes mellitus. Butter consumption is also not significantly associated with incident CHD,223
stroke,222 or total mortality58 (Figure 6). Remarkably few studies have reported on these relationships, suggesting potential
for publication bias. Because such bias would skew toward
the reporting of large associations, the absence of significant
associations in published reports makes it implausible that
multiple other studies have identified but not reported harmful
relationships. Increases in butter consumption are associated
with modestly greater long-term weight gain.29 In sum, butter appears relatively neutral for cardiometabolic health, consistent with findings for total saturated fat (see Saturated Fat,
below); and slightly adverse for long-term weight regulation.
Vegetable Oils
The cardiometabolic effects of vegetable oils have conventionally been considered in light of their fatty acid composition, ie,
of monounsaturated, polyunsaturated, and saturated fats (see sections on each of these fats, below). Emerging evidence suggests
that health effects may also relate to other constituents, in particular, flavonoid (phenolic) compounds (see Phenolic Compounds,
below).30,249–252 For instance, extra virgin olive oil contains oleocanthal, a phenolic that binds cyclooxygenase (COX) 1 and 2
receptors (causing a characteristic burning throat sensation, similar to that induced by chewing no coated aspirin) and exhibits
anti-inflammatory properties.30,251,252 In the PREDIMED randomized trial, participants receiving extra virgin olive oil and dietary
advice to consume a Mediterranean diet experienced 30% lower
risk of stroke, MI, or death, in comparison with control.34 In the
intervention group, ≈60% of the extra virgin olive oil simply
replaced regular olive oil, commonly used in Spain. These findings, together with mixed evidence for cardiovascular benefits of
monounsaturated fats21 (see below), which represent most of the
fats in olive oil, suggest that fatty acid profiles may not be the
only relevant determinant of health effects of oils.
Little investigation has been done on the long-term health
effects of tropical oils, such as palm or coconut. These oils
contain saturated fat, but also other compounds, eg, mediumchain fatty acids in coconut oil that could have health benefits.253 Modern nutritional science has demonstrated the
limitations of drawing conclusions about health effects of any
food product based on theories about its nutrient contents.9
Thus, long-term investigations are urgently needed to make
evidence-informed decisions about avoiding or increasing the
use of tropical oils. Industrially interesterified oils are increasingly common, but similarly without long-term evidence on
their health effects or safety.254
Based on overall evidence for cardiometabolic effects, the
current evidence supports generally increased consumption of
vegetable oils in place of refined grains, starches, sugars, meats,
butter, and lard. Among different oils, the benefits of soybean,
extra virgin olive, and canola oil may be best established. Virgin
oils (eg, extra virgin olive oil, virgin soybean oil) may be preferable because of their low-temperature refining that may better preserve trace phenolic compounds; further study of how
processing methods of vegetable oils influence phytochemicals
and health effects is needed. In the future, certain vegetable oil
blends may offer particular cardiometabolic benefits, eg, combining flax and safflower oils, or canola oil and omega-3 fatty
acids.255 Sufficient evidence to support strong promotion or
avoidance of tropical oils is lacking. Additional metabolic and
long-term studies of different specific vegetable oils, including
refined and unrefined versions, are urgently needed.
SSBs, Noncaloric Sweeteners
Both long-term prospective cohorts and clinical trials demonstrate that SSBs increase adiposity.256 Per serving, SSBs
associate with greater long-term weight gain than nearly any
other dietary factor.28 These effects are likely attributable to
their high glycemic and insulin responses and low satiation
(see Carbohydrate-Rich Foods, above). SSBs are also associated with increased incidence of diabetes mellitus and CHD
(Figure 6).257,258 These effects appear partly but not entirely
mediated by adiposity, consistent with independent adverse
effects of SSBs on other pathways such as hepatic de novo
lipogenesis, visceral fat accumulation, and uric acid production (see Carbohydrate, Added Sugars, Fructose, below).
Globally, SSB consumption is highest at younger ages,259
boding poorly for long-term global health if such high intake
continues as these populations age. Worldwide, 184 000 cardiometabolic deaths per year are estimated to be attributable
to SSB consumption.260
With growing policy attention on sugar-sweetened beverages and added sugars, the food industry is increasingly seeking low-calorie and noncaloric alternatives.261 These include
artificial sweeteners (eg, saccharin, sucralose, aspartame) and
natural low-calorie (also termed high-intensity or nonnutritive) sweeteners (eg, stevia). Based on long-term observational studies and intermediate-duration (eg, 2 years) clinical
204 Circulation January 12, 2016
trials,28,256 these appear to be better alternatives than sugar
for people who consume large quantities of SSBs. However,
based on animal experiments and limited human data, these
artificial and nonnutritive sweeteners may not be benign, with
potential for impact on cognitive processes (eg, reward, taste
perception), oral-gastrointestinal taste receptors, glucoseinsulin and energy homeostasis, metabolic hormones, and the
gut microbiome.262–265 Cognitive effects, for example, may be
especially relevant in children: if tastes become accustomed to
such intense sweetness, will palates and attraction be reduced
for naturally sweet, healthful foods such as apples or carrots?
In sum, based on limited available evidence, artificial and nonnutritive sweeteners appear to be a useful intermediate step
to reduce harms of SSBs (eg, to switch from regular to diet
soda) but should subsequently also be reduced (eg, to switch
from diet soda to seltzer water) to prevent potential long-term
harms. Other uses of such sweeteners should not yet be considered innocuous for cardiometabolic health.
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100% Fruit Juice
Although SSB and 100% fruit juice have similar sugar content, the latter is linked to relatively smaller long-term weight
gain.28 Furthermore, the intake of sugar-sweetened fruit juice,
but not 100% fruit juice, is associated with incident diabetes
mellitus in longitudinal studies (Figure 6).257,266 These findings suggest that 100% fruit juice may have other beneficial
components, eg, dietary fiber, vitamins, and phytochemicals,
that at least partly offset any harms. In short-term trials, fruit
juice has no appreciable effects on blood pressure, cholesterol
levels, or glucose-insulin homeostasis.267,268 In sum, moderate
intake of 100% juice (eg, up to one serving/d) appears reasonable, especially given the low intakes of whole fruit in most
populations; higher intake of 100% juice may not be prudent
because of links to long-term weight gain.
Coffee, Tea
While coffee is commonly thought of in relation to its caffeine content, it represents a liquid extract of legumes (coffee
beans) that contains many active compounds. Both caffeinated and decaffeinated coffee are associated with lower onset
of diabetes mellitus in a dose-dependent fashion (Figure 6).269
Coffee intake also is associated with lower risk of CHD and
stroke but in a nonlinear fashion: in comparison with no
intake, the lowest risk is seen at 3 to 4 cups/d, with increasing
risk at higher intakes.270 Several small controlled trials have
evaluated the potential effects of habitual coffee consumption
on cardiometabolic risk factors, with mixed and inconsistent
findings to date.271–273 A Mendelian randomization study,
evaluating genetic variants linked to coffee intake, did not
find associations with any cardiovascular or metabolic risk
factors.274
Similar to coffee consumption, tea consumption is associated with a lower risk of diabetes mellitus and CVD, especially
comparing very frequent consumption (3–4 cups/d) with none
(Figure 6).275,276 Yet, controlled trials of tea have not identified robust benefits on markers of glucose-insulin homeostasis.277,278 In comparison, in meta-analyses of trials, green tea,
black tea, and herbal roselle tea each modestly lower BP,279–281
whereas green and black tea, but not herbal roselle tea, also
lower LDL-cholesterol.282–284
Overall, observational studies support potential cardiometabolic benefits of both coffee and tea. Plausible biological
mechanisms that could explain the size of these associations
have not been confirmed, with the exception perhaps for tea
and cardiovascular risk. Based on current data, tea and coffee
do not increase cardiometabolic risk and can be safely consumed, and green and black tea may reduce cardiovascular
risk. Further research on these potential benefits is needed
before actively encouraging consumption as a means to
reduce risk.
Alcohol
Habitual heavy alcohol use causes up to one-third of nonischemic dilated cardiomyopathy in many nations.285 Ventricular
dysfunction is often irreversible, even when alcohol use is
stopped; while continued drinking is associated with high
mortality. Habitual alcohol and acute binges are associated
with higher risk of atrial fibrillation.286 Like other liquid
calories (with the exception of milk), alcohol intake also is
associated with higher long-term weight gain.287 Conversely,
in comparison with nondrinkers, regular moderate alcohol
consumption – up to ≈2 drinks per day for men, ≈1 to 1.5
drink per day for women – is associated with lower incidence
of CHD and diabetes mellitus, although not stroke.288,289 Such
observational analyses could partly overestimate benefits,
because never drinkers could include those who have avoided
alcohol because of unmeasured factors that relate to later poor
health.290 Yet, magnitudes and consistency of observed lower
risks of CHD and diabetes across diverse populations, together
with favorable effects on HDL-cholesterol, insulin resistance,
and fibrinogen in controlled trials,291 provide strong evidence
for at least some cardiometabolic benefit of moderate alcohol use. Although a common perception is that the effects are
specific to red wine, cardiometabolic benefits have also been
seen for white wine, beer, and spirits.292 This could relate to
the physiological effects of alcohol itself,291 or the phenolics
in wine and beer, as well.292
Alcohol use exhibits a “J-shape” with all-cause mortality,
with lowest risk observed between 1 drink/wk and 1 drink/d,
and higher risk thereafter.289 In addition, the pattern of drinking is important: benefits are seen with moderate use across
multiple days per week, not with high levels on a few days.293
Across the population, alcohol produces net harms because of
the increased risk of cancers, liver disease, cardiomyopathy,
accidents, violence, homicides, and suicides.1,294 Thus, alcohol
intake should not be recommended as a means to reduce CVD
risk. Adults who already drink alcohol should be advised to
limit their use to moderate levels.
Nutrients and Cardiometabolic Health
Phenolic Compounds
Bioactive polyphenols include flavonols (eg, in onions, broccoli, tea, various fruits), flavones (in parsley, celery, chamomile tea), flavanones (in citrus fruits), flavanols (flavan-3-ols)
such as catechins and procyanidins (in cocoa, apples, grapes,
red wine, tea), anthocyanidins (in colored berries), and isoflavones (in soy). In laboratory studies and randomized trials,
flavonoid-rich cocoa has small but measurable benefits on BP,
endothelial function, insulin resistance, and blood lipids.295–297
Mozaffarian Dietary and Policy Priorities 205
BP-lowering occurs with as little as 6.3 g/d (30 kcal/d) of
commercial dark chocolate and correlates with increased
endothelial nitric oxide production.298 The latter mechanism
also suggests potential cardiovascular benefits beyond lower
BP per se. A few short-term trials of other dietary sources (eg,
tea, red wine, grapes) or specific flavonoid extracts have not
consistently improved BP, lipid levels, or endothelial function.295–297 Some observational studies evaluating total or
selected dietary flavonoids observe lower risk of cardiometabolic events299,300; no long-term clinical trials have been performed. The remarkable heterogeneity of different flavonoids
and their dietary sources limits inference for class effects, and
clinical benefits and dose-responses are not well-established.
Yet, many foods with growing evidence for cardiometabolic
benefits – eg, berries,301 nuts,145 extra virgin olive oil34 – are
rich in phenolics, and the documented physiological effects
are promising and provide clear impetus for further study.
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Sodium
In North America and Europe, most sodium (≈75%) comes
from packaged foods and restaurants, and a minority from
home cooking or table salt; whereas in Asian countries, most
sodium comes from soy sauce and salt added during cooking
or at the table.302 Nearly every country in the world exceeds
the recommended mean national intake of 2000 mg/d.303
Sodium raises BP in a dose-dependent fashion, with
stronger effects among older individuals, people who have
hypertension, and blacks.304 In meta-analyses of longitudinal
studies, high sodium intakes are associated with incident total
stroke, stroke mortality, and CHD mortality (Figure 7).305–307
This is supported by the strength of BP as a surrogate outcome308 and by ecological and experimental studies of sodium
and CVD.304 Indeed, the latter studies suggest that chronically
high sodium induces additional, BP-independent damage to
renal, myocardial, and vascular tissues.309,310
Nearly all observational studies demonstrate a positive
association between very high sodium intakes (eg, 4000+
mg/d) and CVD events, in particular stroke.305–307 Some studies have also observed a potential J-shaped relationship, with
increased CVD risk at modest intakes (eg, <3000 g/d).311–313
These findings have generated recent controversy about the
optimal lowest levels of sodium consumption.314
The assessment of sodium in observational studies, whether
by urine spot, 24-hour collection, or diet questionnaire, has
unique potential biases.315 These include potential for incomplete 24-hour urine collections (leading to underestimation of
sodium intake, especially in less compliant, sicker individuals);
reverse causation (ie, due to at-risk subjects, such as those with
higher BP or diabetes mellitus, actively lowering their sodium
intake); confounding by physical activity (which increases total
energy consumption, that then increases total sodium intake316);
and confounding by frailty and other reasons for low total energy
consumption (given the very strong correlation between sodium
and total energy consumption). These limitations together could
explain the J-shapes seen in certain observational studies.
In comparison, during extended surveillance in a large
sodium study that excluded sick individuals at baseline and
collected multiple 24-hour urine samples per subject, minimizing the potential influence of these biases, participants
with lowest intakes (<2300 mg/d) experienced 32% lower
CVD risk than those consuming high intakes, with evidence
for linearly decreasing risk.317 In ecological studies, the lowest
mean intake level associated with both lower systolic BP and a
lower rise in BP with aging is 614 mg/d.318 In randomized controlled feeding trials, BP reductions have been documented
down to intakes of 1500 mg/d.319 In meta-analyses of prospective observational studies, the lowest mean intakes associated
with lower risk of CVD events ranged from 1787 to 2391
mg/d.305 Together, these findings support the recommended
target intakes in current national and international dietary
guidelines, which range from 1200 to 2400 mg/d.110,313,320–323
Although large reductions in sodium can increase reninaldosterone and serum triglyceride levels,324 the effects of
more moderate, gradual reductions on these pathways are not
established. It also remains unclear whether such physiological effects could offset, let alone reverse, the BP-lowering
benefits of sodium reduction in order to explain the J-shaped
relations with CVD risk seen in some observational studies.
Overall, although adverse effects of rapid sodium reduction
cannot be excluded, and true optimal lower limits remain
uncertain, the sum of evidence suggests that optimal levels of
sodium intake are ≈2000 mg/d193,200–204 (or lower).304 Based on
a target consumption level of 2000 mg/d, 1.65 million annual
global cardiovascular deaths are estimated to be attributable to
excess sodium intake.304
Potassium, Calcium, Magnesium
Vegetables, fruits, whole grains, legumes, nuts, and dairy are
major sources of minerals. In randomized trials, potassium
lowers BP, with stronger effects among individuals who have
hypertension and when dietary sodium intake is high.325 This
BP lowering has been correlated with both increased urinary
potassium excretion and a lower urine sodium-to-potassium
ratio. Consistent with these benefits, potassium-rich diets
are associated with lower risk of CVD, especially stroke
(Figure 7).326 Diets rich in potassium also attenuate, whereas
diets low in potassium exacerbate, the BP-raising effects of
sodium. For instance, a Mediterranean or DASH-type diet (eg,
richer in fruits, vegetables, nuts) reduces, whereas a typical
Western diet increases, the BP-raising effects of sodium.326,327
In sum, the evidence strongly supports the importance of
potassium-rich foods for reducing BP and CVD.
In short-term trials, calcium and magnesium supplements
also modestly lower BP, although with substantial heterogeneity among studies. However, calcium supplements with or
without vitamin D may significantly increase risk of MI in
long-term randomized trials.328,329 In observational analyses,
dietary and blood magnesium levels are inversely associated
with CVD, especially fatal CHD330; long-term trials have not
been performed. Calcium and magnesium supplements cannot
yet be recommended for general CVD prevention.
Antioxidant Vitamins
Several vitamins and nutrients are associated with lower CVD
risk in observational studies, but trials of supplements, including
folate, B vitamins, β-carotene, vitamin C, vitamin E, and selenium, have shown no significant effects on atherosclerosis progression or CVD events.19,331,332 Most of these trials, for reasons
of power, evaluated up to a few years of treatment in patients
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with established CVD or at high risk. In contrast, most observational studies evaluated long-term or habitual intake among generally healthy populations. Thus, discrepancies in findings could
relate in part to different time periods of biological sensitivity
— eg, some vitamins and nutrients could be important only early
in the disease course. Such explanations require confirmation in
prospective studies and trials. Discrepancies between observational studies and supplement trials may also relate to residual
bias in observational studies, eg from other lifestyle behaviors
(ie, observed benefits are not attributable to diet) or from other
nutritional factors in vitamin-rich foods (ie, observed benefits
are caused by diet but not by the specific measured vitamins
or nutrients). For example, diets higher in antioxidant vitamins
tend to be rich in fruits, vegetables, nuts, and whole grains, foods
that contain multiple other beneficial factors including other
vitamins, minerals, phytochemicals, and fiber, and being foods
that can provide benefit by replacing unhealthful foods, as well.
Thus, isolating one or even several components of these foods
in a supplement may not produce similar effects as would occur
from consuming the whole food.8,9
Vitamin D
Observational studies demonstrate links between higher
plasma vitamin D, which is largely driven by sun exposure,
and CVD risk; however, large trials of vitamin D supplements
have shown no benefits.104 If higher plasma vitamin D proves
to lower CVD risk, brief sun exposure can efficiently provide
such levels in comparison with dietary intake. Ongoing trials
are now testing whether higher doses of vitamin D supplements influence CVD; for now, such supplementation is not
warranted as a means to improve cardiometabolic health.
Carbohydrates, Added Sugars, Fructose
For decades, carbohydrates were considered a foundation of
a healthful diet, as evidenced by the placement of grain products at the base of the 1992 Food Guide Pyramid. Since that
time, it has become clear that, although total carbohydrate
has little influence on cardiometabolic health, the types and
quality of carbohydrate have a major impact (Figures 6 and 7;
see Carbohydrate-Rich Foods, above). Certain carbohydratecontaining foods (eg, fruits, legumes, vegetables, minimally
processed whole grains) are protective, whereas foods rich in
refined grains (eg, white bread, white rice, crackers, cereals,
bakery desserts), starches (eg, russet or white potatoes), and
added sugars (eg, SSBs, candy) are harmful. Because of this
diversity, the cardiometabolic effects of total carbohydrate
are modified by the quality of carbohydrate. For people who
consume mostly low-fiber, rapidly digested, refined grains,
starches, and added sugars, a lowering of total carbohydrate
will produce substantial metabolic benefits. Yet, recommending a low-carbohydrate diet per se is not ideal: the focus
should be on reducing less healthful carbohydrates, not all
carbohydrates.
The US Food and Drug Administration has recently proposed revising the Nutrition Facts Panel to include added
sugars.333 Although added sugars are not healthful, targeting
added sugars alone, rather than overall carbohydrate quality,
could push consumers toward foods low in added sugars but
rich in equally harmful refined complex carbohydrates (eg,
many breakfast cereals, breads, crackers); and away from
otherwise healthful foods containing modest amounts of
added sugar (eg, nuts or minimally processed whole grain–
rich cereals sweetened with honey). Appropriately, the 2015
Dietary Guidelines Advisory Committee explicitly advises
restriction of both refined grains and added sugars.21
Much public attention has focused on the potential harms
of high-fructose corn syrup. Because glucose, the main sugar
in regular corn syrup (which is mostly starch), tastes less
sweet than fructose, high-fructose corn syrup has been modified to increase the fructose-to-glucose ratio to about 1:1, ie, a
similar ratio as in natural sugar (sucrose) found in cane sugar,
beet sugar, or honey. Consequently, there are few expected or
observed physiological or health differences between highfructose corn syrup versus sucrose.165,166,334 In contrast, there
are important metabolic differences between glucose and fructose – each equally present in both high-fructose corn syrup
and natural sugar (sucrose). In particular, high doses of rapidly
digested glucose induce postprandial hyperglycemia, hyperinsulinemia, and related metabolic disturbances. When glycogen stores are replete, excess glucose is further converted to
fat via hepatic de novo lipogenesis. In comparison, high doses
of rapidly digested fructose have little influence on blood glucose or insulin levels, but more directly stimulate hepatic de
novo lipogenesis, hepatic and visceral adiposity, and uric acid
production.164–166 Thus, high doses of rapidly digested glucose
and fructose are each harmful, with such effects occurring via
both separate and partly overlapping pathways. In contrast,
low doses of slowly digested glucose or fructose (eg, as found
in fruit) would each have minimal cardiometabolic harms.
Ultimately, the health differences between high-fructose corn
syrup versus natural added sugar are small in comparison with
their overall dose, rapidity of digestion, and accompanying
nutrients in the foods in which they are consumed.
Total Fat
In 1980, the US Dietary Guidelines recommended limiting dietary fat to <30% of calories. Based on evidence for
harms of very low-fat diets, and little evidence to support a
30% restriction, the Guidelines were moderated in 2005 to a
new range of 20% to 35% of calories.335 A primary motivation
for restricting total fat was to lower saturated fat and dietary
cholesterol because of concern that these increased cardiovascular risk. Thus, total fat was targeted as a means to lower
saturated fat. In addition, based on the calorie density of fat
and some limited interventional studies, it was theorized that
low-fat diets might help prevent obesity.335 Unfortunately, the
focus on restricting total fat did not account for the health benefits of high intakes of plant-derived fats (see Nuts, Vegetable
Oils, above) nor the harms of processed carbohydrates (see
Carbohydrate-Rich Foods, above), the most common replacement when dietary fat is reduced.
In recent years, the lack of cardiometabolic benefit of
low-fat diets has been convincingly demonstrated. In trials
of short-term weight loss, high-fat diets are at least as effective as low-fat diets (see Dietary Quality, Energy Balance).21
For long-term weight maintenance, the fat content of foods
is a poor metric for differentiating protective versus harmful
effects.28,29,51 Both prospective cohorts and large randomized
trials confirm that low-fat diets have no benefits for major
Mozaffarian Dietary and Policy Priorities 207
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chronic diseases (Figure 7).157,331 The large WHI randomized trial substantially lowered total dietary fat among nearly
50 000 US women followed for nearly a decade, and did not
show benefits for any major end point including heart disease
(Figure 2, top), stroke, cancers, diabetes mellitus, or insulin
resistance.36–39 In contrast, randomized trials have confirmed
the many prior observational cohort findings that diets higher
in healthful fats, including in excess of the current 35% limit,
reduce the risk of cardiovascular disease (Figure 2, bottom) and diabetes mellitus.24,25,34,35 These latter trials confirm
decades-old ecological evidence that some of the healthiest
traditional diets in the world are rich in fats from vegetable
oils, nuts, and seafood.19 Based on this evidence, the 2015
Dietary Guidelines Advisory Committee stated, for the first
time, that dietary guidelines should not focus on lowering
total fat.21
The current restriction on total fat shapes numerous government feeding programs and policies;336 drives industry
marketing of fat-reduced desserts, snacks, salad dressings,
processed meats, and low-fat other products of poor nutritional value; and leads most Americans to actively avoid
dietary fat337 and instead consume far too many refined
carbohydrates.21 Avoidance of total fat also undermines
attempts to limit refined starch and added sugar, while discouraging the food industry from providing products higher
in healthful fats. Based on the accumulated evidence, a comprehensive restructuring of nutritional policy away from fat
reduction is warranted.336
Saturated Fat
Saturated fat represents a highly heterogeneous category
of fatty acids, with chain lengths ranging from 6 to 24 carbons, deriving from diverse foods, and possessing dissimilar
biology. For instance, palmitic acid (16:0) exhibits in vitro
adverse effects; whereas medium-chain (6:0–12:0), odd-chain
(15:0, 17:0), and very long-chain (20:0–24:0) saturated fats
may have metabolic benefits.61,338,339 This biological and metabolic diversity does not support the grouping together of all
saturated fatty acids based on only one chemistry characteristic: the absence of double bonds.340
Even for any single saturated fatty acid, the physiological effects are complex. For instance, in comparison with
carbohydrate, 16:0 raises blood LDL-cholesterol, yet simultaneously raises HDL-cholesterol, reduces triglyceride-rich
lipoproteins and remnants, and has no appreciable effect on
ApoB,341 the most salient LDL-related characteristic. Effects
of 16:0 on ApoCIII, an apolipoprotein modifier of LDL- and
HDL-related risk, are unknown; the triglyceride-lowering
effects of 16:0341 would suggest potential benefit on lowering
ApoCIII. Saturated fats also lower lipoprotein(a), an independent and casual cardiovascular risk factor,342 in comparison
with monounsaturated fat or carbohydrate.343
Dietary saturated fats are also obtained from very different
foods – eg, cheese, grain-based desserts, dairy desserts, chicken,
processed meats, unprocessed red meat, milk, yogurt, butter,
vegetable oils, and nuts. Each of these possesses, in addition to
saturated fat, numerous other ingredients and characteristics that
modify their health effects. Judging the long-term health impact
of foods or diets based on isolated macronutrient composition
is unsound, often creating paradoxical food choices and product formulations.336,340 Furthermore, tissue levels of even-chain
saturated fatty acids (eg, 14:0, 16:0), that appear most harmful
in vitro, commonly result from endogenous hepatic synthesis of
fat in response to dietary intake of carbohydrate46; 14:0 and 16:0
blood levels correlate more with intakes of dietary starches and
added sugars than meats or dairy.61
These complexities clarify why total saturated fat consumption has little relation to health. Judging a food or a person’s diet as harmful because it contains more saturated fat,
or as beneficial because it contains less, is unsound. This is
consistent with the many longitudinal cohort studies demonstrating largely neutral effects of overall saturated fat intake
(Figure 7).39,157,344 Consistent with this, meats higher in processing and sodium, rather than saturated fat, are most strongly
linked to CHD (see Meats, above). Cheese, a leading source of
saturated fat, is also linked to neutral or even beneficial effects
on CHD and diabetes mellitus (see Milk, Cheese, Yogurt,
above). In sum, these lines of evidence – complex lipid effects
including little influence on ApoB, no relation of overall intake
with CHD, and no observed cardiovascular harm for most
major food sources – provide powerful and consistent evidence
for absence of appreciable harms of total saturated fat.
Yet, while certain saturated fat–containing foods such as
dairy, nuts, and vegetable oils promote health,20 these findings
do not support the benefits of other saturated fat-rich foods.
Although unprocessed red meats and butter may be relatively
neutral for CHD, no studies demonstrate appreciable benefits,
all meats appear to increase diabetes mellitus, and processed
meats are strongly linked to CHD (see Meats, above).20,29,173,178
This is the mistake of recent media reports: conflating complexities of health effects and benefits of some saturated fat–
containing foods (and possibly some specific saturated fatty
acids) with unsupported recommendations to eat more butter
and bacon as routes to health.345
Yet, even among scientists, the cardiovascular health
effects of saturated fat remain a controversial topic. Continued
prioritization of saturated fat reduction appears to rely on
selected evidence: eg, effects on LDL-cholesterol alone (discounting the other, complex lipid and lipoprotein effects);
historical ecological trends in certain countries (eg, Finland)
but not in others; and expedient comparisons with polyunsaturated fat, the most healthful macronutrient. For example,
although falling blood cholesterol concentrations in some
Western countries correlate with decreases in national saturated fat intake, trends in intakes of dietary fats cannot explain
most of the blood cholesterol changes across or within most
nations. For instance, total blood cholesterol fell similarly in
the United States and France between 1980 and 2000, but
national changes in dietary fats may explain only ≈20% of the
decline in the United States, and virtually none of the decline
in France.346
In certain Western nations, statin use may account for a
large proportion of declining blood cholesterol after 2000347,348;
however, because of the relatively low use for primary prevention before this period, statins cannot explain the observed
similar declines in blood cholesterol over the preceding 20 to
30 years. Reasons for the large and steady declines in blood
cholesterol and blood pressure over the past 4 decades in
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nearly all Western nations are not fully elucidated, particularly when viewed against the backdrop of increasing obesity.
The extent to which these pervasive declines reflect trends in
medication use, dietary fats, other dietary changes, physical
activity, or other unknown influences (eg, related to fetal nutrition, the microbiome, or other unknown pathways) remains
unclear.
Based on the similar cardiovascular effects of consuming
total carbohydrate versus saturated fat, and the comparative
benefit of polyunsaturated fats, guidelines to lower saturated
fat are increasingly highlighting the importance of consuming polyunsaturated fats as the specific replacement.21 Yet,
the resulting benefit appears specific to increased intake of
polyunsaturated fat, rather than reduced saturated fat. For
instance, total saturated fat, carbohydrate, and protein each
appear relatively neutral for CHD, whereas the effects of
total monounsaturated fat remain uncertain (see below).21,349
The relatively neutral effects of each of these macronutrients likely reflect substantial heterogeneity in nutrient subtypes and food sources within each of these categories. In
comparison with any of these broad categories, polyunsaturated fat appears to be similarly beneficial.350 Consequently,
it makes little sense to focus on saturated fat, which represents a smaller proportion of calories than these other macronutrients, especially carbohydrate. Indeed, in comparison
with refined carbohydrates, saturated fat appears slightly
beneficial.155,351 These lines of evidence support guidelines to
increase healthful vegetable oils rich in polyunsaturated fats
and phenolics, optimally in place of refined grains, starches,
and added sugars.
Monounsaturated Fat
Although monounsaturated fat (predominantly oleic acid,
18:1) has conventionally been considered a cardioprotective fat, the evidence supporting this notion is mixed
(Figure 7).21,39,157,352 Monounsaturated fat improves BP and
cholesterol353 and, when consumed in place of saturated fat,
lowers glucose among those predisposed to insulin resistance.354 Yet, total monounsaturated fat intake is not associated
with lower incidence of diabetes mellitus355; it is associated
with trends toward greater CVD in some cohort studies155;
and it increases atherosclerosis in primate experiments, potentially because of the enrichment of LDL cholesteryl oleate and
increased LDL proteoglycan binding.356 Taken together, the
current evidence for cardiometabolic benefits of total monounsaturated fat (largely oleic acid) is not strong.21
The food source may modify these health effects. For
instance, cohort studies suggest that the consumption of
olive oil, but not mixed animal and plant sources of monounsaturated fat, is linked to lower risk,352 whereas vegetable
oil sources of monounsaturated fat increase LDL cholesteryl
oleate but reduce LDL proteoglycan binding.357 These results
suggest that other compounds in these fats/oils may modify
the overall health effects (see Phenolic Compounds, below).
Thus, focusing on specific types of foods and oils, rather than
monounsaturated fat content per se, may be most prudent.
Extra virgin olive oil and mixed nuts, and perhaps high-oleic
canola oil, appear to be good dietary choices to improve cardiometabolic health.24,25,34,35,145,255
Polyunsaturated Fat
Polyunsaturated fats include n-6 and n-3 fatty acids, with this
distinction based on the carbon location of the first double bond.
The most common are n-6 linoleic acid (LA, 18:2n-6) and n-3
α-linoleic acid (ALA, 18:3n-3), derived principally from vegetables and their oils (eg, soybean, canola, flaxseed, walnuts).
Seafood is the major source of long-chain n-3 polyunsaturated
fats, principally EPA and DHA.201 Although the liver readily
synthesizes saturated and monounsaturated fats from carbohydrate (by means of hepatic de novo lipogenesis), humans cannot
synthesize or interconvert LA or ALA, making them essential
fatty acids that must be consumed in the diet. Humans also synthesize relatively little EPA and DHA,344 for which diet remains
the major source. Evidence for cardiometabolic effects of seafood-derived n-3 fats are reviewed above (see Fish).
LA consumption lowers LDL-cholesterol and triglyceride-rich lipoproteins and raises HDL-cholesterol.349 Although
potential proinflammatory effects of LA have been theorized358
and popularized, such inference is based largely on rodent
experiments, with little supportive evidence in humans.359–362
Indeed, in people, LA appears to have anti-inflammatory and
insulin-sensitizing effects.363–365 In controlled trials, in comparison with saturated fat, LA reduces hepatic steatosis and
systemic inflammation and increases lean muscle mass.366,367
Arachidonic acid, the prototypical metabolite of LA, is also
commonly considered proinflammatory, but is also the natural precursor to specialized proresolving mediators of inflammation.368,369 In prospective studies, higher biomarker levels
of arachidonic acid are linked to significantly lower risk of
CHD.39 LA is also associated with significantly lower risk of
CHD (Figure 7), whether in comparison with carbohydrate
or saturated fat350; and, in meta-analysis of controlled clinical
trials, consumption of n-6–rich vegetable oils, in place of animal fats, reduces CHD events (Figure 7).349 Notably, in these
latter trials, the average intake of n-6 polyunsaturated fat was
≈15% energy,349 higher than current dietary guidelines that
recommend no more than 10% to 11% energy from polyunsaturated fat.370
In comparison with seafood sources, ALA is a relatively
available and inexpensive plant source of n-3 polyunsaturated
fat. Ecological studies suggest health benefits of increasing ALA
intakes in populations with low overall n-3 polyunsaturated fat
intake.356 Yet, the findings of trials of ALA and risk markers, such
as platelet function, inflammation, endothelial function, and arterial compliance, and observational studies of ALA’s association
with CVD and diabetes mellitus endpoints, have been mixed
and inconclusive.371,372 Few long-term trials of ALA and clinical
events have been conducted; in 1 Dutch trial, 40 months of an
ALA-containing margarine led to a small, nonsignificant reduction in major cardiovascular events (hazard ratio, 0.91; 95% confidence interval, 0.78–1.05).373 Further investigation of ALA’s
role in cardiometabolic health is warranted (Figure 7).211,372
LA has similar CHD benefits whether replacing carbohydrate or saturated fat (see Saturated Fat, above).349,350 Thus,
increased consumption of polyunsaturated fat-rich vegetable
oils is an evidence-based strategy to lower CHD risk, whether
in place of saturated fat or carbohydrate. Optimally, polyunsaturated fat-rich vegetable oils should perhaps replace refined
starches and added sugars, given the independent harms of
Mozaffarian Dietary and Policy Priorities 209
these refined carbohydrates. Because the controlled trials
demonstrating CHD benefits of PUFA used soybean oil,349
which contains both n-6 (LA) and n-3 (ALA) polyunsaturated
fats, the selection of vegetable oils containing both n-6 and
n-3 fatty acids (eg, soybean, canola) may be most prudent.
Because both n-3 and n-6 polyunsaturated fats are beneficial,
little interaction between them is evident, and the n-3:n-6 ratio
is not a practical metric to evaluate health effects.364,374
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Trans Fatty Acids
Trans fatty acids (TFAs) are mono- or polyunsaturated fats with
one or more double bonds in a trans position, rather than the
mammalian synthesized cis position. Although small amounts
of natural TFA are found in meats and milk of ruminants (eg,
cow, sheep, goat; formed by gut microorganisms), these contribute minimally to diet (<0.5%E) and do not associate with
CVD risk375; indeed, trans-16:1n-7, a trace TFA biomarker
of dairy fat, is linked to a lower risk of diabetes mellitus and
sudden cardiac death.247 Conversely, high levels of industrially
produced TFA can be consumed from partially hydrogenated
vegetable oils, which typically contain 30% to 60% TFA. These
fats have industrial advantages for commercial deep frying,
baked goods, packaged snacks, and shortening. Higher TFA
intake from partially hydrogenated oils is consistently associated with the risk of CHD and sudden death (Figure 7).331,376
In trials, TFAs have unique adverse effects on blood lipids and
lipoproteins, including raising LDL-cholesterol, ApoB, triglycerides, and lipoprotein(a), and lowering HDL-cholesterol
and ApoA1; these effects are generally consistent whether the
TFA replaces saturated, monounsaturated, or polyunsaturated
fat.377 TFAs also appear to have nonlipid adverse effects, promoting inflammation, endothelial dysfunction, insulin resistance, visceral adiposity, and arrhythmia, although the strength
of evidence for these different nonlipid effects varies.378,379 In
sum, the implicated pathways suggest that TFA-containing
partially hydrogenated oils influence pathways related to adipocyte dysfunction and insulin resistance. Emerging evidence
suggests that 18:2 TFA isomers may be the most adverse; these
can be formed through not only partial hydrogenation, but also
other industrial processes such as oil deodorization and hightemperature cooking.380,381 Because partially hydrogenated oils
are food additives with clear adverse effects, their elimination
is a public health priority.247,382–384
Protein
The cardiometabolic effects of dietary protein are not well
established. In meta-analysis of randomized trials, increased
protein consumption has little effect on cardiometabolic risk
factors including adiposity, lipids, blood pressure, inflammation, or glucose.385 Few longitudinal studies have reported
on total protein intake and CHD events, with generally null
results.189,386 This is not surprising: similar to total fat or total
carbohydrate, total protein represents the sum of very different
foods (red meats, processed meats, milk, cheese, yogurt, fish,
nuts, legumes, etc) with widely divergent health effects. Thus,
a focus on dietary protein per se appears much less relevant
for CVD than a focus on specific types of foods consumed. A
few cohorts have seen protective associations of animal protein intake with the risk of hemorrhagic stroke; causality and
mechanisms remain unclear, but have been hypothesized to
relate to the potentially protective effects of animal protein or
dietary cholesterol on vascular fragility.198,199
Behavior Change
Barriers and Opportunities for Healthy Eating
Many current approaches to improving nutrition – eg, clinical
counseling, food labels, menu labeling, dietary guidelines –
arise from an implicit assumption that dietary habits are primarily a function of individual choice. In reality, multiple
complex factors influence dietary choices (Figure 9). Even at
the individual level, dietary habits are determined not simply
by personal preference but also by familial norms, education,
income, nutritional and cooking knowledge and skills, and
health status.387 Additional relevant factors include attitudes
toward food and health, incentives, motivation, and values.388
Other lifestyle behaviors such as television watching and sleep
also influence patterns of food consumption.28,71,72,389 Outside
the individual, sociocultural determinants include cultural
norms, social pressures, and social networks.390 Additional
environmental influences include neighborhood accessibility (eg, food availability, cost, convenience). Each of these
individual, environmental, and sociocultural determinants is
shaped by, and in turn shapes, much broader drivers of food
choice such as agricultural policy and production practices,
food industry formulations and marketing, national and international trade agreements, other market forces, climate, and
agricultural policies.391 These complex determinants each
represent a potential barrier, but also a promising lever and
opportunity, for encouraging healthful diets.
Some have argued that humans are biologically wired to
prefer specific unhealthful foods, eg, rich in fat, sugar, and
salt. This perspective is overly simplistic and inconsistent
with several lines of empirical evidence. For instance, most
dietary fats are healthful, making a food’s fat content a poor
marker of its intrinsic harm or benefit (see Total Fat). In addition, taste preferences are highly complex, influenced by considerations of aroma, appearance, color, shape, and texture.
The observed diversity of diets within and across individuals,
generations, cultures, and populations further belies a particular biological preference for food.4,346,392–394 Even the brain’s
unconscious reward/craving (addiction) centers are plastic
and can be trained over months to respond to healthful rather
than unhealthful foods.395 Furthermore, for the food industry,
the success or failure of specific products has often depended
not on differences in contents of fat, sugar, or salt, but on the
prowess and power of their convenience, packaging, marketing, and promotion.396 Undoubtedly, taste plays a role in
consumer choice, but so do availability, price, packaging,
marketing, convenience, and culturally driven perceptions of
norms, status, and prestige. Each of these levers are powerful
and can be used to influence the selection of healthier foods.
Clinical (Individual-Based) Strategies
Numerous randomized controlled trials have identified effective approaches for successful individual behavior change
(Table 5).94,95 These strategies have demonstrated efficacy
and should be incorporated by providers into their practice
to target specific dietary behaviors and other lifestyle habits, such as tobacco use, physical inactivity, and medication
210 Circulation January 12, 2016
noncompliance. Providers should recognize that, although
patient compliance with both lifestyle and medications is
similarly imperfect, such strategies, even imperfectly implemented, improve clinical outcomes.397
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Health Systems Strategies
For many clinicians, a variety of barriers within the health system can limit their ability to fully implement effective behavior
change strategies. Such barriers might include, for example, limited patient visit time to focus on behavior change, insufficient
financial or other provider incentives for health promotion, suboptimal knowledge or experience on the most effective behavior
change strategies and relevant behavioral targets, and inadequate
tools for assessing and monitoring behaviors over time. Specific
changes in the healthcare system can strongly support and facilitate behavior change efforts by providers (Table 6).10,95,398,399 Such
healthcare systems approaches are being introduced for tobacco
and obesity control efforts. Many electronic medical records systems have fields for tobacco use and body weight, although their
accuracy and consistency of use remain variable. The expansion
of these healthcare system approaches to target diet quality is
crucial, especially in light of new incentives in the Affordable
Care Act for creating new electronic health record systems and
for focusing on prevention in Accountable Care Organizations.
Novel Technology Strategies
Recent years have witnessed an explosion of novel personal
technologies that aim to improve health, including mobile
device applications (mHealth), Internet-based programs, and
personal tracking devices (eg, FitBits). These technologies are
promising because of the potential for low cost, scalability,
use in multiple settings (including middle- and low-income
nations), and opportunities for continuous, personalized modifications and improvements. Many incorporate established
behavior-change strategies (Table 5) such as setting proximal,
targeted goals; self-monitoring; feedback; and peer support.
A systematic review identified numerous randomized trials and quasi-experimental studies evaluating these approaches
for dietary change and/or weight loss (Afshin A, Mozaffarian
D; unpublished data; 2015). Most were Internet based or combined Internet and mobile approaches. The great majority had
durations between 6 weeks and 6 months; very few extended
beyond 1 year. Approximately two-thirds of these studies identified improved dietary behaviors or greater weight loss with the
use of these novel technologies, in comparison with usual care.
Although promising, little is known on their long-term effectiveness and sustainability, and longer-term studies are required.
Policy Strategies
Given the key roles of social and environmental factors in shaping dietary habits, policy (population-based) approaches are
crucial to achieve broad success. Effective strategies can be
designed and implemented at local levels (eg, schools, worksites, communities), and at city, state, national, and international levels. Several specific approaches have strong evidence
for efficacy (Table 7).10,11 These experiences generally demonstrate that education or information alone, without additional
economic or environmental changes, has a limited influence
on behavior.11,400,401 Integrated, multicomponent approaches
Figure 9. Barriers and opportunities for healthy eating. Reproduced from Afshin et al10 with permission of the publisher. Copyright © 2014,
John Wiley & Sons, Ltd.
Mozaffarian Dietary and Policy Priorities 211
that include upstream policy measures, midstream educational efforts, and downstream community and environmental
approaches may be especially effective. Policy strategies can
complement health systems efforts while also reducing social
and racial disparities caused by the clustering of suboptimal diet
habits, local environments, and disease risk factors.
Several factors have limited the translation of this knowledge
to action, including evolving messages and confusion about specific dietary priorities, uncertainty regarding effective methods
for behavior change, and inadequate tools to monitor diets efficiently. Fortunately, other public health successes for complex
behavioral challenges- eg, tobacco use, motor vehicle safetyencourage optimism for the success of concerted multicomponent strategies that include strong quality standards and policy
actions to improve diet. At the population level, even modest
shifts in risk factors can substantially and rapidly alter population
health.97,402
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Role of Multiple Stakeholders
Successful, sustainable improvements in population dietary
behaviors will require close collaboration among multiple
stakeholders, including academics, clinicians, health systems,
insurers, community organizations, schools, workplaces,
advocacy groups, policy makers, farmers, retailers, restaurants, and food manufacturers.10,391,403 For instance, academic
institutions should prioritize research on optimal dietary targets and cost-effective policies; engage with communities,
Table 5. Evidence-Based Approaches for Individual Behavior
Change in the Clinic Setting
• Specific, proximal, shared goals. Set specific, proximal goals in
collaboration with the patient, including a personalized plan to achieve the
goals (eg, increase fruits by 1 serving/d over the next 3 mo).
• Self-monitoring. Establish a strategy for self-monitoring, such as a dietary
or physical activity diary or web-based or mobile phone application.
• Scheduled follow-up. Schedule regular follow-up (in-person, telephone,
written, or electronic), with clear frequency and duration of contacts, to
assess success, reinforce progress, and set new goals as necessary
• Regular feedback. Provide feedback on progress toward goals, including
using in person, telephone, or electronic feedback.
• Self-efficacy.* Increase the patient’s perception that they can successfully
change their behavior.
• Motivational interviewing.† Use motivational interviewing when patients
are resistant or ambivalent about behavior change.
• Family and peer support. Arrange long-term support from family, friends,
or peers for behavior change, such as in workplace, school, or community
programs.
• Multicomponent approaches. Combine 2 or more of the above strategies
into the behavior change effort.
*Examples of strategies to increase self-efficacy include mastery experiences
(set a reasonable, proximal goal that the person can successfully achieve);
vicarious experiences (have the person see someone with similar capabilities
performing the behavior, such as walking on a treadmill or preparing a healthy
meal); physiological feedback (explain to the patient when a change in their
symptoms is related to worse or improved behaviors); and verbal persuasion
(persuade the person that you believe in their capability to perform the behavior).
†Motivational interviewing represents the use of individual counseling to
explore and resolve ambivalence toward changing behavior. Major principles
include fostering the person’s own awareness and resolution of their
ambivalence, and their own self-motivation to change, in a partnership with the
counselor or provider.
advocacy groups, and policy makers; and inform and evaluate industry efforts. Clinicians should implement behavior
change strategies; advocate for broad health system changes
to support these efforts; and engage with local communities. Communities, schools, and workplaces should demand
and support comprehensive programs for dietary change.
Advocacy groups should partner with scientists to disseminate best practices while holding government and industry
accountable for meaningful action.
Local and national governments should prioritize nutrition
and facilitate participation of other stakeholders in policy development, implementation, and evaluation. Based on its impact on
health, the environment, and the economy, nutrition is among
the leading global issues of our time. Policy makers at all levels
must recognize and focus on these topics. Surveillance, monitoring, and evaluation of dietary habits and diet-related policies
are necessary to develop solutions, assess whether implemented
programs have intended effects, identify and address disparities,
and detect unintended consequences. Organized global public
health efforts must complement these activities, assist smaller
governments with effective food policies, and provide a countervailing force to multinational industry lobbying. Key global
economic and political institutions that must play more assertive
roles include the United Nations, the World Health Organization,
the World Trade Organization, and the World Bank.
The food industry, from agricultural producers to food
manufacturers, retailers, and restaurants, must also commit to
healthier foods. Although big food has shared many tactics with
big tobacco – eg, lobbying, deception, denial, resistance to regulation404 – these 2 industries are not fully analogous. The food
industry is far more heterogeneous, from types of products to
strengths of commitment to healthfulness. The food industry has
also demonstrated some responsiveness to dietary guidelines and
public preferences over the past 40 years: eg, generating low-fat
products, margarines, noncaloric sweeteners, low-carbohydrate
products, gluten-free and organic foods, and many others. Our
food systems have also made tremendous progress in reducing
food-borne illness, increasing volume and production, improving convenience and stability, and reducing cost – all important
Table 6. Evidence-Based Health Systems Approaches to
Support and Facilitate Behavior Change
• Ongoing training for providers on evidence-based behavior change strategies
as well as relevant dietary targets, including relevant ethnic and cultural issues.
• Integrated systems to facilitate coordinated care by multidisciplinary teams,
including physicians, nurse practitioners, dieticians, physical activity
specialists, and social workers.
• Practical electronic systems to help assess, track, and report on specific
dietary behaviors, including during, before, and after provider visits.
• Electronic systems for scheduling and tracking regular follow-up visits for
behavior change.
• Electronic systems to facilitate provision of feedback to patients and
providers on progress during behavior change efforts.
• Reimbursement guidelines and incentives that reward behavior change efforts.
• Restructuring of practice goals and quality benchmarks to incorporate key
dietary interventions and targets.
Adapted from Spring et al95 from the author. Copyright © 2013, The Authors.
212 Circulation January 12, 2016
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priorities of the last century. Healthfulness for chronic diseases,
in particular, cardiometabolic diseases, has been the great failure – one that must now be addressed with modern nutrition
and policy science. Perhaps most importantly, with tobacco,
the ultimate aim is total elimination. In contrast, we need major
agribusiness, food manufacturers, and retailers to successfully
feed the 7+ billion people on the planet. These businesses must
support and be informed by modern evidence, advance their
technical expertise to formulate and sell healthier products, and
use consumer education, marketing, and product pricing to promote dietary health. Agriculture and food industry should form
transparent, sincere partnerships with advocacy groups, governments, and other stakeholders to replace less healthy foods with
more healthful options. Their ultimate success must be linked to
selling of healthful, optimally processed foods in a sustainable
and profitable fashion.
Motor vehicle safety provides an informative analogy
(Figure 10). The US Centers for Disease Control and Prevention
named reduced fatalities from motor vehicle accidents as one of
the top 5 public health successes of the 20th century.405 This
remarkable success was not achieved merely by national driving
guidelines, motor vehicle labeling, or other consumer-focused
education – ie, many of the current emphases for dietary change
– but by a comprehensive, multicomponent effort targeting the
consumer (driver), product (car), environment (road), and culture (particularly drunk driving). This provides a road map for
improving population diets: address the consumer, the product
(foods and beverages), the environment (retailers, cafeterias,
restaurants), and the culture (unhealthy eating, marketing). For
instance, just as driving under the influence of alcohol is now
socially stigmatized, the acceptability of fast foods, soda, and
ultraprocessed products, including industry and celebrity marketing of such foods, must be reduced. Just as the auto industry
remains successful and profitable, and the public continues to
use and benefit from cars, a similar multicomponent, evidenceinformed approach is needed to produce a successful, profitable
food system that provides safe, healthful products.
Conclusions – The Way Forward
The global challenges of diet-related obesity, diabetes mellitus,
and CVD present enormous health and economic burdens403
and emphasize the imperative of prioritizing nutrition in clinical care, advocacy, research, and policy. Scientific advances
provide a wealth of new evidence to identify several key dietary
priorities for cardiometabolic health. These include food-based
priorities for more fruits, nonstarchy vegetables, nuts, legumes,
fish, vegetable oils, yogurt, and whole grains; and fewer processed (sodium-preserved) meats and foods higher in refined
carbohydrates and salt (Figure 3). Red meats should be minimized to prevent diabetes mellitus; butter used occasionally but
not emphasized; and other foods (eg, unprocessed poultry, eggs)
consumed in moderation according to personal preference.
Table 7. Evidence-Based Policy Approaches to Improve Population Dietary Habits
Media and education
• Sustained, focused media and education campaigns, using multiple modes, for increasing consumption of specific healthful foods or
reducing consumption of specific less healthful foods or beverages, either alone or as part of multicomponent strategies.*
Labeling and
information
Economic incentives
• On-site supermarket and grocery store educational programs to support the purchase of healthier foods.
• Mandated nutrition facts panels or front-of-pack labels/icons as a means to influence industry product formulations.†
• Subsidy strategies to lower prices of more healthful foods and beverages.‡
• Tax strategies to increase prices of less healthful foods and beverages.‡
• Long-term changes in broad agricultural policies (not subsidies alone) to create infrastructure that facilitates production, transportation,
storage, and marketing of healthier foods.
Schools
• Multicomponent interventions focused on improving both diet and physical activity, including specialized educational curricula, trained
teachers, supportive school policies, a formal physical education program, serving of healthier food and beverage options, and a parental/
family component.
• School garden programs including nutrition and gardening education and hands-on gardening experiences.
• Fresh fruits and vegetables programs that provide free fruits and vegetables to students during the school day.
Workplaces
• Comprehensive worksite wellness programs including dietary, physical activity, and tobacco cessation/prevention components.
• Increased availability of healthier food/beverage options and strong nutrition standards for foods and beverages served, in combination with
on-site prompts, labels, or icons to select healthier choices.
Neighborhood
environment
• Increased availability of supermarkets near homes.§
Quality standards
• Quality standards for marketing of foods and beverages to children, including on television, near schools and public places frequented by
youths, on packages, or in other fashions. (IIa B).†
• Quality standards on harmful (eg, sodium, partially hydrogenated oil) or beneficial (eg, healthful fats) ingredients in foods.
*Evidence for effectiveness of long-term campaigns (eg, > 3 y) comes mainly from multicomponent interventions, making it difficult to quantify the independent
effects of the media efforts.
†Effects on industry formulations are based largely on anecdotal observations. There is not strong evidence that consumer behavior is appreciably influenced by the
provision of dietary information through food product or menu nutrition labeling.11,400,401
‡The magnitude of the dietary change correlates with the size of the price difference. Certain population subgroups, including youth and lower socioeconomic
populations, are especially sensitive to economic incentives.
§Based largely on cross-sectional associations, few longitudinal data are available. Cross-sectional findings consistently show a beneficial association between the
availability of neighborhood supermarkets and diet quality or diet-related risk factors; similar analyses for availability of grocery stores, convenience stores, and fast-food
restaurants have been far less consistent.
Adapted from Mozaffarian et al11 with permission from the author. Copyright © 2012, The Authors.
Mozaffarian Dietary and Policy Priorities 213
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Figure 10. A roadmap for improving population
dietary habits. Top, A great public health success
of the 20th century was a 90% reduction in
deaths from motor vehicle accidents, from 18 to
1.7 deaths per million vehicle miles. Bottom,
This remarkable triumph was achieved by a comprehensive, multicomponent effort targeting the
driver, car, road, and culture. This provides a road
map for improving population diets: address the
consumer, the product (foods and beverages), the
environment (retailers, cafeterias, restaurants), and
the culture (unhealthy eating). MADD indicates
Mothers Against Drunk Driving. Top reproduced
from Centers for Disease Prevention and Control405.
Coffee and tea can be enjoyed, with possible (but not yet confirmed) benefits; and alcohol, if consumed, should be moderate
(up to 1 drink/d for women and 2 drinks/d for men). Harmful
additives, in particular sodium, trans fat, and added sugar, will
generally be lower in such diets and must be further minimized
through strong policy actions. There is growing evidence and
consensus for such food-based dietary patterns as the best
means to reduce CVD, obesity and weight gain, and diabetes
mellitus,21 replacing outdated emphases on total fat, other isolated nutrients, and calorie counting. Clinical behavior-change
efforts, health system changes, novel technologies, and robust
policy strategies must complement and facilitate these individual food choices, which together will reduce cardiometabolic
disease and economic burdens across the population.
Acknowledgments
I am grateful for the indispensable contributions over the years to my
knowledge and perspectives on nutrition science and policy resulting
from collaborations and conversations with many friends and colleagues, including David Siscovick, Rozenn Lemaitre, Walter Willett,
Frank Hu, David Ludwig, Simon Capewell, Renata Micha, Jason Wu,
Ashkan Afshin, and many others. I also thank Masha Shulkin and
Ashley Wright for their assistance with the drafting of Figures 6 and
7; and the Circulation editors and peer reviewers for their critical
comments during the preparation of this article.
Sources of Funding
This work was supported by the National Health, Lung, and Blood
Institute (R01 HL085710, R01 HL115189), National Institutes of Health.
Disclosures
Ad hoc honoraria or consulting from Bunge, Haas Avocado Board,
Amarin, Astra Zeneca, Boston Heart Diagnostics, GOED, and Life
Sciences Research Organization; chapter royalties from UpToDate;
and scientific advisory boards, Unilever North America (ended
2014) and Elysium Health. Harvard University holds a patent, listing
Dr Mozaffarian as 1 of 3 coinventors, for use of transpalmitoleic acid
to prevent and treat insulin resistance, type 2 diabetes mellitus, and
related conditions.
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Dietary and Policy Priorities for Cardiovascular Disease, Diabetes, and Obesity: A
Comprehensive Review
Dariush Mozaffarian
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Circulation. 2016;133:187-225; originally published online January 8, 2016;
doi: 10.1161/CIRCULATIONAHA.115.018585
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